Abstract
Evolution from static to dynamic label-free thermal imaging has improved bulk tissue characterization, but fails to capture subtle thermal properties in heterogeneous systems. Here, we report a label-free, high speed, and high-resolution platform technology, focal dynamic thermal imaging (FDTI), for delineating material patterns and tissue heterogeneity. Stimulation of focal regions of thermally responsive systems with a narrow beam, low power, and low cost 405 nm laser perturbs the thermal equilibrium. Capturing the dynamic response of 3D printed phantoms, ex vivo biological tissue, and in vivo mouse and rat models of cancer with a thermal camera reveals material heterogeneity and delineates diseased from healthy tissue. The intuitive and non-contact FDTI method allows for rapid interrogation of suspicious lesions and longitudinal changes in tissue heterogeneity with high-resolution and large field of view. Portable FDTI holds promise as a clinical tool for capturing subtle differences in heterogeneity between malignant, benign, and inflamed tissue.
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Introduction
Applications of thermal imaging in materials science, security, and medicine have surged in recent years, due in part to advances in infrared sensor technology1,2,3. Relying on the emissive properties of living systems, thermal imaging has been used to generate heat maps of individuals and detect inflammation. Despite its advantages of being a handheld, real-time, and non-contact measurement technique, the poor specificity of thermal imaging has prevented widespread adoption in the clinic4. To overcome this limitation, techniques that probe thermal tissue properties, rather than equilibrium temperature, have been developed. These dynamic thermal imaging (DTI) techniques apply a hot or cold thermal stimulus to tissue and observe its rate of recovery. Leveraging the different rates of thermal recovery in healthy versus diseased tissue following the application of thermal stimulus5, DTI has demonstrated improved tumor detection accuracy5,6,7,8. However, label-free DTI fails to fully capture high-resolution thermal tissue heterogeneity, which can highlight subtle differences for distinguishing malignant, benign, or inflamed tissue9,10. This resolution limit is due to how a thermal stimulus is applied. In existing implementations of DTI, a thermal stimulus is applied over a large area of tissue, which blurs the detection of unique thermal properties of small areas within the thermally perturbed region. Super-resolution DTI rasters focal excitation of visible light across the sample, followed by image reconstruction that determines the centroid of absorptive agents well beyond the diffraction limit to improve spatial resolution11. For biological samples, exogenous contrast agents such as dyes or nanoparticles are used to generate sufficient contrast. While this technique is an exciting advancement for microscopy applications, in vivo or point-of-care applications would be complicated by long imaging time (minutes rather than seconds), complex system setup, and reliance upon exogenous contrast agents. While exogenous agents are particularly useful in an ex-vivo setting, for in-vivo applications, they add regulatory hurdles for product approval that may limit their clinical applicability. As such, a gap exists between low-resolution but high field of view wide-field DTI that has seen multiple in vivo applications, and super-resolution DTI, which holds great promise ex vivo.
Here, we report the development of a new label-free dynamic photothermal imaging technique, focal dynamic thermal imaging (FDTI), which overcomes the spatial limitations of current DTI strategies while using simple hardware and analysis methods compared to super resolution DTI. Abundance of light-absorbing chromophores creates heat upon exposure to radiation. Leveraging this phenomenon, we postulated that the skin would efficiently absorb a narrow beam of 405 nm light to generate a focal thermal source that propagates radially from the heat source through the tissue along a temperature gradient. The use of focused 405 nm light allows for thermal contrast generation through endogenous chromophores rather than exogenous dyes. However, care must be taken to ensure laser irradiation does exceed doses that may be associated with DNA damage12. A thermal camera detects the ensuing perturbation and recovery of the thermal equilibrium. While tissue-specific optical properties define the degree and distribution of light absorption and subsequent heat generation, tissue properties such as thermal conductivity, specific heat, density, perfusion, metabolic rate, and the baseline temperature dictate heat propagation (Fig. 1). Assessment of this new technique using custom 3D printed thermal resolution targets showed higher spatial resolution and contrast than conventional DTI. In vivo, FDTI was able to distinguish healthy and cancerous tissue in animal models of cancer with over 90% accuracy. The label-free, non-contact, intuitive, and portable FDTI system provides high-resolution and high contrast images in real-time for use in diverse applications, including materials characterization and disease diagnosis.
Results
Computational modeling
A 3D model of the FDTI phenomenon was developed in COMSOL to demonstrate the feasibility of using this technique to measure unique signals from different materials and tissue types. The impact of each variable specified in the Pennes’ bioheat equation13 on heat generation and transfer was evaluated using a parameter sweep across high and low biological values. The simulations were analyzed by plotting cross-sections of the thermal peak along the diameter of the laser spot and extracting the amplitude and full width at half maximum (FWHM). Simulations depicted in Fig. 2a illustrate the expected radial heat propagation away from the initial thermal source initiated by light absorption. As expected, the parameter sweep of thermal and optical properties show that thermal conductivity and optical absorption coefficient greatly affect the resulting FDTI signals (Fig. 2b, c).
The model was validated experimentally using porcine tissue with well-differentiated muscle and fat compartments (Fig. 2d–f) using the same laser power and irradiation duration in the model. The FWHM and amplitude of the thermal peak revealed similar trends in the experiment and COMSOL simulation results, verifying that the trends observed in the parameter sweep reflect results from biological experiments. The COMSOL model provides a numerical basis for using FDTI to detect distinct thermal characteristics in different tissue types.
Data acquisition and analysis
FDTI data were acquired with a thermal camera. The images can be visualized as 3D plots with spatial location in x and y, and temperature in z at a fixed time t. Prior to laser stimulation, the 3D plot is essentially flat and reflects steady state skin temperature. A thermal peak grows exponentially with time in the area of laser stimulation. After turning off the laser, the heat decays exponentially as a function of tissue thermal properties. Common features extracted from FDTI, either from single frames or throughout heating, include thermal peak amplitude, width, FWHM, area, and volume. Furthermore, exponential growth and exponential decay constants can be fit to the maximum temperature over time (Fig. 1). Additionally, in a perfectly homogeneous sample, the thermal peak is smooth and radially symmetric. Small scale heterogeneity in tissue thermal properties perturbs the expected smooth and radially symmetric image.
FDTI spatial resolution
The effective spatial resolution of FDTI depends on the spatial resolution of the thermal camera used, the laser beam width, and the step size between imaging points. A narrower laser beam generates heating over a smaller tissue volume than a wider laser beam, reducing thermal diffusivity-driven blur and high spatial resolution. The spatial resolution of FDTI and a standard widefield DTI using a 405 nm LED was tested using a custom 3D printed phantom that had 1 mm thick pillars printed in rows and spaced 1 mm apart (Fig. 3). The phantom was filled with India ink solution to obscure the pillars (Fig. 3a). FDTI measurements were taken in 125 micron steps across the phantom and the FWHM for each measurement was extracted and plotted for each step (Fig. 3b). The widefield LED illuminated thermal decay time constants were plotted pixel by pixel against the phantom location (Fig. 3c). FDTI shows three distinct peaks corresponding to the three pillars, whereas widefield DTI did not reveal structures consistent with phantom components.
FDTI detects changes in tissue heterogeneity in vivo
Proliferating cells such as tumors can create a high level of disorganization and tissue heterogeneity by recruitment of blood vessels, de-differentiation of cancer cells into different phenotypes, and induction of a robust immune infiltrate. To determine if FDTI can measure malignancy-induced changes in tissue heterogeneity, subcutaneous mouse and rat models of breast cancer were evaluated over the course of tumor development. Two experimental designs with different healthy tissue control sites were investigated: one consisting of the selection of a contralateral site, and another consisting of a temperature-matched control site. FDTI images and videos were acquired in real-time with a thermal camera and a low powered (5 mW) laser-induced heat source. The thermal data were processed and analyzed to extract FDTI features based on tissue heat profile.
A simplified visualization of the FDTI data was obtained by plotting the tissue thermal profiles after 10 s of continuous laser stimulation. This allows for a visual comparison of thermal profiles between tumor and healthy tissue. In the early stages, both tumor and healthy tissue exhibited similar but distinguishable heat profiles, measured by FWHM, but this feature diverged as the tumor size increased and the tumor matured (Fig. 4). In general, the healthy tissue exhibits a taller and narrower FDTI profile than tumor tissue, which showed a shorter and broader thermal response. As the tumor developed, the thermal response of healthy tissue became sharper and taller. Although the height of the thermal response in the tumor region increased slightly with time, the profile remained broad throughout tumor development. These results point to the potential use of high-resolution FDTI to determine tissue proliferation and heterogeneity. Furthermore, the visual features correspond to consistent findings observed across all of the mouse and rat measurements, which had significantly larger FWHM, standard deviation at steady state, and error when fitting the thermal profiles to a Lorentzian surface plot (Figs. 5 and 6).
Multiparametric feature classifier enhances the accuracy of tumor detection in a mouse model of cancer
In the mouse experiment, Balb/c mice with subcutaneous breast tumors on the right dorsal flank (n = 9) had FDTI measurements made on the tumor and the contralateral sides which served as healthy control (Fig. 5a). Thermal images were collected 10 s after turning on the laser, features were extracted and compared with the contralateral-control group. Figure 5b displays results from three thermal profile features: FWHM, the Lorentzian fitting sum of squared errors (SSE), and the temperature standard deviation at steady state. These features are independent of each other and were tested as classification inputs.
Results from a fivefold cross-validation quadratic discriminant analysis are displayed in the form of receiver operator characteristic curves from the three features (Fig. 5c). The area under the curve (AUC) values of single features range from 0.49 to 0.89. However, when combined in a multiple feature classifier, the AUC reached 0.95, demonstrating higher accuracy than any individual feature.
FDTI distinguishes underlying tissue heterogeneity in a rat model of cancer
Thermal imaging is widely used to map body temperature and identify suspicious areas, but the low specificity of the technique has hampered adoption in the clinic4,14. Multiple hot spots may indicate inflammation, infection, or cancer. A unique application of FDTI is the rapid assessment of suspicious lesions that are first flagged using the standard widefield thermal imaging systems. In such a case, it is more relevant to have temperature-matched comparison sites to determine whether thermal stimulation of a suspicious area of tissue can distinguish between cancerous and healthy tissue. In this study, Sprague Dawley rats with subcutaneous right flank breast tumors (n = 4) had three measurements acquired from the tumor, and three measurements acquired from temperature-matched sites (Fig. 6a). One of the temperature matched measurements served as the control, and all the remaining measurements were normalized to this control measurement. FDTI data were acquired in a video format, with recording initiated just prior to a 10-s laser exposure, followed by a 10-s observation of thermal recovery. FDTI features were extracted as described in the Methods section, and comparisons were made between features of the tumor and healthy group. Plots between healthy and tumor tissue from the same three features utilized for classification in the mouse study (FWHM, Lorentzian SSE, and steady state temperature standard deviation) were analyzed (Fig. 6b). The trends observed are the same, with tumor tissue having statistically significant higher values than the healthy tissue for all features.
Similar to the mouse study, these features were tested as classification inputs. A fivefold cross-validation quadratic discriminant analysis was displayed in the form of receiver operator characteristic curves from the three features above (Fig. 6c). The area under the curve (AUC) values of single features ranged from 0.65 to 0.75, but combining them into a multiple feature classifier improved the AUC to 0.91, demonstrating higher accuracy than any individual feature. In addition, the consistency in the multiple feature classifier between mouse and rat studies highlights the robustness of this technique and these features as predictive inputs.
Discussion
Photothermal techniques, which measure the thermal response of a system to photon absorption, can be used to interrogate the thermal properties of materials. This includes measurement of multiple photothermal sequelae, including change in index of refraction, heating, thermoelastic expansion, secondary infrared irradiation, and photomechanical stresses15. For applications at nanoscale, scanning thermal microscopy techniques use thermal probes attached to cantilevers that directly contact the material to detect nanoscale changes in heat flow16, from which thermal properties can be extracted. At microscale, the 3ω method has been used to measure the thermal conductivity of materials and single cells17,18. A number of microscopes have been developed that take advantage of the local change in refractive index upon chromophore absorption, some of which use vibrational spectroscopy to extract molecular content15,19,20. Macroscopically, widefield thermal imaging is routinely used in industrial applications such as assessment of electrical connections and bulk material characterization, while DTI has been increasingly used in medical applications21,22. Few methods exist that can probe micro and mesoscopic-resolution applications without the use of bulky, expensive hardware, that limit field applications. To meet this need, we have developed FDTI (Fig. 7).
Existing photothermal methods have reported resolution at sub-micron levels15,20,23, however, the cost and complexity of these techniques have limited their use in the field. In medical applications, more translational, but significantly lower resolution techniques such as widefield DTI and pulsed photothermal radiometry have been studied. Pulsed photothermal radiometry (PPTR) is a non-contact optical method that applies a pulsed laser to generate heat due to optical absorption and measures thermal diffusivity based on heat propagation through the material21. This method has been recently used for physiologic characterization of skin24 and to predict temperature rise in patients undergoing laser therapy25. Both of these techniques apply stimulus over a large area and the subsequent thermal response becomes blurred due to thermal conductivity, significantly reducing the spatial resolution. A recent article achieved sub-diffraction limited thermal imaging of tissue slides stained with exogenous methylene blue nanoparticles for contrast enhancement by irradiating the sample using a scanning focal light beam to prevent thermal blurring11. This technique tracked optical absorption induced heating, but did not track heat dissipation over time, confining its sensitivity to optical absorption and specific heat capacity rather than thermal conductivity. Capitalizing upon the successes of these methods, FDTI irradiates small regions of tissue to prevent thermal blur and tracks the response over time, providing sensitivity to heterogeneity in optical and thermal properties. The sub-millimeter resolution demonstrated in our FDTI work is not the absolute resolution limit, rather the resolution is fundamentally limited by spot size, step size, and the thermal resolution of the camera used.
FDTI’s instrumentation is exceptionally simple, requiring only a collimated laser and a thermal camera. Furthermore, the extraction of FDTI features is straightforward and can be performed in real time. Indeed, the specifications of FDTI equipment will affect the resolution and sensitivity of the system, but these simple requirements are in stark contrast to high-resolution thermal techniques which utilize expensive laser systems24, lock-in detection schemes, fragile alignment systems15,19,20,21,23, or which rely on exogenous contrast11 which limits in vivo application. In addition, some of the lasers used are medical grade therapeutic lasers that cause pain24, which highly differ from the painless and low power irradiation used for FDTI.
FDTI was tested in an in vivo cancer detection application, a possible avenue to pursue in future human studies. A variety of widefield thermal imaging methods have been tested for cancer detection due to their favorable translational characteristics. Some methods aim to improve the accuracy of equilibrium thermal measurements using artificial neural networks and have reported accuracy of 80.95% in tumor detection26. DTI has been shown to increase the accuracy significantly (from 54 to 82%) when compared with steady state thermal imaging27. Improved classification algorithms have heightened the sensitivity and specificity of this technique to 95–100% and 83–99% respectively, for the diagnosis of skin cancer5,28 in a 140 patient trial. While these results are exciting, the spatial resolution limitations of widefield DTI techniques may not allow robust estimation of tumor heterogeneity and margin assessment, which would further expand the utility of dynamic thermal imaging. Additional heat challenge techniques have applied visible light sources including green LEDs that created heat due to absorption by hemoglobin to identify the vascular boundary of tumors29. Herein, FDTI had 95% and 91% accuracy in small cohorts of breast cancer mouse and rat models, respectively, using classification based on single point FDTI measurements of cold tumors. A number of quantitative image parameters indicative of cancer were identified from FDTI data. FWHM was significantly higher in cancerous regions, which have higher thermal conductivity than healthy tissues and can thus transfer heat away from the thermal source faster, preventing a large heat buildup. The standard deviation was higher in cancerous tissues and may be due to more heterogeneous tissue that can be observed in tumors. Finally, the goodness of fit to a Lorentzian surface as measured by the sum of squared errors was significantly lower in cancerous tissue, further suggesting that spatial inhomogeneities are more frequent in cancerous tissue and impact the likeness of the FDTI profile to a Lorentzian surface. Importantly, the quantitative nature of the FDTI parameters makes it an objective technique that should not be dependent upon the user or require interpretation, overcoming a large obstacle from standard thermography.
The simplicity of FDTI lends itself to being portable, fast, low cost, and lightweight, and is therefore prime for clinical translation and field applications. This is an important advantage compared to non-widefield thermal methods, which have thus far been performed on tissue sections or in vitro cell samples. Our successful range of experiments spanning 3D printed structures, ex vivo biological tissue, and longitudinal in vivo mouse and rat studies demonstrate the utility of this approach across many biomedical applications and size scales, and warrants further exploration of this technique in human patients. Widefield approaches which have similarly simple and portable instrumentation have shown great promise to positively impact patient care5,22,28,30, and FDTI is poised to fill the need for simple, inexpensive, and high resolution dynamic thermal imaging.
Development of real-time analysis software and further optimization of the laser irradiation and thermal decay times for scanning and extension into rapid 2D FDTI mapping could further improve FDTI. Although the classification accuracy of in vivo cancer detection was not perfect, the classification was made using single point FDTI measurement that cannot capture the full extent of the tumor’s heterogeneous properties. Repeating such experiments with 2D mapping capabilities in larger animal cohorts will be a fairer test of FDTI’s diagnostic abilities. Furthermore, depth penetration of the excitation light can be increased by using longer irradiation wavelengths31, and through longer laser exposure times32, however, deeper imaging will result in a trade-off of reduced spatial resolution33.
Interestingly, we observed that mouse and rat tumors progressively grew cold as they increased in size, which is contradictory to human tumors which are known to be warmer than surrounding tissue34,35. However, our finding of cold rodent tumors is supported in the literature36,37. This implies that most rodent models do not represent human disease with respect to an important thermal physiologic parameter. However, a strength of FDTI and dynamic thermal imaging approaches is the sensitivity to thermal properties of the tissue, regardless of baseline temperature. Temperature is known to affect immune response and enzyme activities38, and these important differences should be considered when conducting cancer research in animal models. Due to this difference in the tumor microenvironment, FDTI trials in humans may yield different results compared to those observed in cold mouse and rat tumors, and should be evaluated independently of the animal data presented herein.
In summary, we have developed FDTI, a platform technology that offers high-resolution and high contrast thermal imaging to applications with sample heterogeneity such as biological tissue. It adds measures of thermal properties to the sources of label-free optical contrast, with the potential to reveal new pathophysiology not yet before seen with conventional optical methods. FDTI addresses an important gap in stimulated thermal imaging with widefield DTI systems being inexpensive, simple, and clinic-ready but suffering from poor spatial resolution, and thermal microscopes offering high resolution but with costly, complex, non-portable, and ex vivo-only applications (Fig. 7).
Materials and methods
Experimental FDTI system
The instrumentation used to perform FDTI experiments is shown in Figs. 5a and 6a. The FDTI system consists of a collimated, low powered, continuous 405 nm laser diode (Laserland, Wuhan, Hubei Province, China). The laser beam profile was characterized and found to be an elliptical Gaussian with FWHM 0.69 mm × 1.35 mm. A polarizer is aligned with the laser beam to limit power output at 5 mW. A FLIR (Wilsonville, OR, USA) T650SC 25° high-resolution focal plane array uncooled microbolometer with 640 × 480 pixels, 64 mm × 48 mm field of view, 100 µm spatial resolution, < 0.02 °C sensitivity, spectral range of 7.5–14 µm, and 30 Hz frame rate is used with a 5.8 × Lens (FLIR #T198060) to collect thermal images and videos. The laser is powered using a custom electronic driver circuit controlled by a Teensy LC (Sherwood, Oregon, USA) microcontroller. Both the Teensy and camera are connected to a PC running a custom MATLAB script (MathWorks, Natick, MA) to allow for synchronized, automated control of each component. The script first triggers the camera to record thermal video prior to laser stimulation, then triggers the laser on for a specified pulse duration, and finally continues recording video after the laser is shut off for a sufficient time period to capture return to equilibrium temperature. The laser exposure time for in vivo subcutaneous tumor measurements was tested at 0.1, 1, 3, 5, 10, 20, 30, and 60 s to identify the shortest amount of time that reached a plateau in temperature rise, from which 10-s exposure was selected. Similarly, the time until thermal decay plateaued was observed and found to consistently decay within 10 s after laser exposure completion.
Experimental image acquisition, processing, and feature extraction
Thermal images and videos are processed and analyzed using our custom image processing pipeline. First, thermal radiometric image or video data is imported into a custom MATLAB graphical user interface (GUI). The user is then prompted to select the laser irradiation point from a thermal preview image. A region of interest (ROI) encompassing the heated tissue is then programmatically generated. A battery of parameters, including peak temperature, thermal peak area, thermal peak volume, 2D Gaussian fitting, 2D Lorentzian fitting, and FWHM are subsequently measured from this ROI. In addition, measures of goodness of fit for temperature rise can be utilized in real-time to ensure appropriate experimental conditions.
FDTI resolution testing
FDTI’s ability to resolve small spatial differences in material properties was tested using a 3D printed phantom composed of black polylactic acid (PLA) filament (Hatchbox 3D, Pomona, CA, USA) in which rows of 1 mm thick pillars were spaced 1 mm apart and filled with a 1000× dilution India ink solution (Higgins, Leeds, MA, USA). The India ink solution provides an optical absorber, and the water and plastic provide thermal conductivity differences on a small spatial scale. To test the spatial resolution as a function of laser beam width, the irradiation beam diameter was adjusted using a 1000 µm pinhole and the beam was translated across the pillars with a 125 µm step size. The data were analyzed by plotting the FWHM and the thermal decay constant was plotted as a function of translated distance.
The spatial resolution of FDTI was directly compared to widefield irradiation DTI techniques by irradiating the phantom with a 405 nm LED with a 1 cm spot size. As analyzed in the literature, the temperature decay after light exposure was fit to an exponential and the decay constant was calculated per pixel in the illumination area. A row spanning the same pillars measured using FDTI was analyzed and per pixel decay time constant was plotted to identify the spatial resolution and directly compare with the FDTI values from the same pillar spacing rows.
Computational model
The FDTI phenomenon was modeled in COMSOL Multiphysics (Burlington, MA, USA) version 5.4.2 by coupling of the Bioheat Transfer and Radiation in Absorbing-Scattering Media modules. This software enabled simulation of heat transfer based on specific properties of the tissue using the finite element method on a custom mesh to solve for the change in heat over time. The model solved Pennes’ bioheat equation which requires input for the density, specific heat capacity, initial temperature, ambient temperature, and thermal conductivity of the tissue, blood perfusion rate, and metabolic heat generation, all of which were obtained from values published in the literature (Table 1). Laser-induced heating was incorporated into the model using the Radiation in a Participating Media module. The radiative heat term requires inputs of optical absorption coefficient, scattering coefficient, initial radiative intensity, refractive index, and coefficient of anisotropy. For boundary conditions, the surface was set as a diffuse surface with thermal emissivity and ambient temperature inputs as shown in Table 1. The interior boundaries are set to "open boundaries" and thus allow for heat to transfer through them, and the boundary temperatures are consistent with adjacent internal temperatures throughout the duration of the simulation. Prior to application of the radiative term, the tissue was allowed to self-regulate for 2 min, followed by the application of a 5 mW laser with a Gaussian profile on the tissue for 10 s.
Computational parameter sweep
The effects of various model parameters on model output were tested using parameter comparison of tissue thermal conductivity and optical absorption at a range of values reported in the literature from physiological studies (Table 1). Parameter sweep results were analyzed by plotting the cross-section of the surface temperature. The amplitude and FWHM of the thermal peak generated were calculated throughout laser stimulation and compared across parameter values.
Computational testing of biological tissue types
The ability to distinguish between tissue types was tested by evaluating the model using input parameters from fat and muscle tissue based on reported literature values (Table 2). Similar to the parameter sweep, the peak amplitude and FWHM were calculated throughout laser stimulation and compared.
An experiment was designed to test the accuracy of the COMSOL model. Bulk pieces of porcine muscle and porcine fat were experimentally measured using an FDTI system as described below. The amplitude and FWHM were calculated and plotted, and compared to COMSOL simulation results.
In vivo mouse and rat experiments
All animal work was approved and performed under an approved protocol by Washington University’s Institutional Animal Care and Use Committee (IACUC). Animals were housed under a 12 h dark–light cycle.
Two subcutaneous breast cancer models were used. The first subcutaneous model utilized 6 week-old female Balb/c mice (n = 9) that were subcutaneously implanted with 106 4T1-Luc-GFP murine breast cancer cells on the right dorsal flank. The tumor size was tracked using calipers and were typically palpable by day 7. Images at steady state and at 10 s of laser stimulation on days 7, 8, 10, 11, 14, 16, and 18 were captured post injection. FDTI measurements were acquired on the tumor and matched contralateral sites served as controls.
The second subcutaneous breast cancer model used 6 week old and adult female Sprague Dawley rats (n = 2 each, n = 4 total), which were injected with 105 MAT B III mammary adenocarcinoma cells in the right flank. FDTI measurements were acquired on the tumor and temperature-matched regions served as controls.
FDTI videos were taken of the rats every 3–4 days post tumor cell injection. Caliper measurements were taken to track the growth of the tumor. Once a palpable tumor was identified, points were measured on the tumor.
All animals were sacrificed based on humane end-points. Thermal images and videos were used for feature extraction using our image processing pipeline.
Statistical analysis and classification
Statistical analysis was performed using MATLAB R2018a. Multiple image features were extracted from each FDTI image and video as described above. Each feature was correlated using the Spearman correlation against the class label (healthy or cancerous) and ranked to determine which features were most predictive of tissue composition. The ability to distinguish healthy from cancerous tissue based on the individual most predictive features was determined using a t-test with a level of significance set to 0.05. An additional correlation matrix comparing all features was calculated to identify independent features to serve as predictors. Individual predictors and combinations of them were entered to train and evaluate a Quadratic Discriminant Analysis classifier with fivefold cross-validation using the MATLAB Classification Learner Application. The model performance was evaluated using accuracy measured as area under the receiver operator characteristic (ROC) curve.
Ethical approval
All methods were performed in accordance with the relevant guidelines and regulations (i.e. Declaration of Helsinki).
Data availability
The datasets generated and analyzed during the current study are available from the corresponding author on reasonable request.
References
Topalidou, A., Ali, N., Sekulic, S. & Downe, S. Thermal imaging applications in neonatal care: a scoping review. BMC Pregnancy Childbirth 19, 381. https://doi.org/10.1186/s12884-019-2533-y (2019).
Bagavathiappan, S., Lahiri, B. B., Saravanan, T., Philip, J. & Jayakumar, T. Infrared thermography for condition monitoring—a review. Infrared Phys. Technol. 60, 35–55. https://doi.org/10.1016/j.infrared.2013.03.006 (2013).
Corsi, C. Infrared: a key technology for security systems. Adv. Opt. Technol. 2012, 15. https://doi.org/10.1155/2012/838752 (2012).
Vreugdenburg, T. D., Willis, C. D., Mundy, L. & Hiller, J. E. A systematic review of elastography, electrical impedance scanning, and digital infrared thermography for breast cancer screening and diagnosis. Breast Cancer Res. Treat. 137, 665–676. https://doi.org/10.1007/s10549-012-2393-x (2013).
Godoy, S. E. et al. Detection theory for accurate and non-invasive skin cancer diagnosis using dynamic thermal imaging. Biomed. Opt. Express 8, 2301–2323. https://doi.org/10.1364/BOE.8.002301 (2017).
Herman, C. The role of dynamic infrared imaging in melanoma diagnosis. Expert Rev. Dermatol. 8, 177–184 (2013).
Oh, G., Lee, K.-H. & Chung, E. Active thermodynamic contrast imaging for label-free tumor detection in a murine xenograft tumor model. Biomed. Opt. Express 8, 5013–5026. https://doi.org/10.1364/BOE.8.005013 (2017).
Nowakowski, A. & Kaczmarek, M. Active dynamic thermography—problems of implementation in medical diagnostics. Quant. Infrared Thermogr. J. 8, 89–106. https://doi.org/10.3166/qirt.8.89-106 (2011).
Burrell, R. A., McGranahan, N., Bartek, J. & Swanton, C. The causes and consequences of genetic heterogeneity in cancer evolution. Nature 501, 338. https://doi.org/10.1038/nature12625 (2013).
O’Connor, J. P. B. et al. Imaging intratumor heterogeneity: role in therapy response, resistance, and clinical outcome. Clin. Cancer Res. 21, 249–257. https://doi.org/10.1158/1078-0432.ccr-14-0990 (2015).
Bouzin, M. et al. Photo-activated raster scanning thermal imaging at sub-diffraction resolution. Nat. Commun. 10, 5523. https://doi.org/10.1038/s41467-019-13447-0 (2019).
Lawrence, K. P. et al. The UV/visible radiation boundary region (385–405 nm) damages skin cells and induces “dark” cyclobutane pyrimidine dimers in human skin in vivo. Sci. Rep. 8, 12722. https://doi.org/10.1038/s41598-018-30738-6 (2018).
Wissler, E. H. Pennes’ 1948 paper revisited. J. Appl. Physiol. 85, 35–41 (1998).
Omranipour, R. et al. Comparison of the accuracy of thermography and mammography in the detection of breast cancer. Breast Care (Basel) 11, 260–264. https://doi.org/10.1159/000448347 (2016).
Zharov, V. & Lapotko, D. Photothermal sensing of nanoscale targets. Rev. Sci. Instrum. 74, 785–788. https://doi.org/10.1063/1.1520322 (2003).
Gomès, S., Assy, A. & Chapuis, P.-O. Scanning thermal microscopy: a review. Physica Status Solidi (a) 212, 477–494. https://doi.org/10.1002/pssa.201400360 (2015).
Park, B. K. et al. Thermal conductivity of biological cells at cellular level and correlation with disease state. J. Appl. Phys. 119, 224701. https://doi.org/10.1063/1.4953679 (2016).
Tong, T. & Majumdar, A. Reexamining the 3-omega technique for thin film thermal characterization. Rev. Sci. Instrum. 77, 104902. https://doi.org/10.1063/1.2349601 (2006).
Bai, Y. et al. Ultrafast chemical imaging by widefield photothermal sensing of infrared absorption. Sci. Adv. 5, eeav127. https://doi.org/10.1126/sciadv.aav7127 (2019).
Lapotko, D. O., Romanovskaya, T. Y. R., Shnip, A. & Zharov, V. P. Photothermal time-resolved imaging of living cells. Lasers Surg. Med. 31, 53–63. https://doi.org/10.1002/lsm.10068 (2002).
Sergey, A. T., Jong-In, Y., Dennis, M. G., Welch, A. J. & Thomas, E. M. Non-contact measurement of thermal diffusivity in tissue. Phys. Med. Biol. 46, 551 (2001).
Pirtini Çetingül, M. & Herman, C. Quantification of the thermal signature of a melanoma lesion. Int. J. Therm. Sci. 50, 421–431. https://doi.org/10.1016/j.ijthermalsci.2010.10.019 (2011).
Zhang, D. et al. Depth-resolved mid-infrared photothermal imaging of living cells and organisms with submicrometer spatial resolution. Sci. Adv. 2, e1600521. https://doi.org/10.1126/sciadv.1600521 (2016).
Verdel, N., Marin, A., Milanič, M. & Majaron, B. Physiological and structural characterization of human skin in vivo using combined photothermal radiometry and diffuse reflectance spectroscopy. Biomed. Opt. Express 10, 944–960. https://doi.org/10.1364/BOE.10.000944 (2019).
Jung, B., Kim, C. S., Choi, B. & Stuart Nelson, J. Hand-held pulsed photothermal radiometry system to estimate epidermal temperature rise during laser therapy. Skin Res. Technol. 12, 292–297 (2006).
Ng, E. Y. K. & Kee, E. C. Advanced integrated technique in breast cancer thermography. J. Med. Eng. Technol. 32, 103–114 (2008).
Ohashi, Y. & Uchida, I. Applying dynamic thermography in the diagnosis of breast cancer. IEEE Eng. Med. Biol. Mag. 19, 42–51 (2000).
Godoy, S. E. et al. Dynamic infrared imaging for skin cancer screening. Infrared Phys. Technol. 70, 147–152. https://doi.org/10.1016/j.infrared.2014.09.017 (2015).
Case, J. R., Young, M. A., Dréau, D. & Trammell, S. R. Noninvasive enhanced mid-IR imaging of breast cancer development in vivo. J. Biomed. Opt. 20, 116003 (2015).
Herman, C. & Pirtini Cetingul, M. Quantitative visualization and detection of skin cancer using dynamic thermal imaging. JoVE https://doi.org/10.3791/2679 (2011).
Ash, C., Dubec, M., Donne, K. & Bashford, T. Effect of wavelength and beam width on penetration in light-tissue interaction using computational methods. Lasers Med. Sci. 32, 1909–1918. https://doi.org/10.1007/s10103-017-2317-4 (2017).
Zhou, Y. & Herman, C. Optimization of skin cooling by computational modeling for early thermographic detection of breast cancer. Int. J. Heat Mass Transf. 126, 864–876. https://doi.org/10.1016/j.ijheatmasstransfer.2018.05.129 (2018).
Ntziachristos, V. Going deeper than microscopy: the optical imaging frontier in biology. Nat. Methods 7, 603. https://doi.org/10.1038/nmeth.1483 (2010).
Shada, A. L. et al. Infrared thermography of cutaneous melanoma metastases. J. Surg. Res. 182, e9–e14. https://doi.org/10.1016/j.jss.2012.09.022 (2013).
Anbar, M. Hyperthermia of the cancerous breast: analysis of mechanism. Cancer Lett. 84, 23–29. https://doi.org/10.1016/0304-3835(94)90354-9 (1994).
Song, C. et al. Thermographic assessment of tumor growth in mouse xenografts. Int. J. Cancer 121, 1055–1058. https://doi.org/10.1002/ijc.22808 (2007).
Xie, W., McCahon, P., Jakobsen, K. & Parish, C. Evaluation of the ability of digital infrared imaging to detect vascular changes in experimental animal tumours. Int. J. Cancer 108, 790–794. https://doi.org/10.1002/ijc.11618 (2004).
Messmer, M. N., Kokolus, K. M., Eng, J. W. L., Abrams, S. I. & Repasky, E. A. Mild cold-stress depresses immune responses: implications for cancer models involving laboratory mice. BioEssays 36, 884–891. https://doi.org/10.1002/bies.201400066 (2014).
Jacques, S. L. Optical properties of biological tissues: a review. Phys. Med. Biol. 58, R37–R61. https://doi.org/10.1088/0031-9155/58/11/r37 (2013).
Duck, F. A. In Physical Properties of Tissues (ed. Duck, F. A.) 9–42 (Academic Press, Cambridge, 1990).
McIntosh, R. L. & Anderson, V. A comprehensive tissue properties database provided for the thermal assessment of a human at rest. Biophys. Rev. Lett. 05, 129–151. https://doi.org/10.1142/s1793048010001184 (2010).
van den Berg, P. M., De Hoop, A. T., Segal, A. & Praagman, N. A computational model of the electromagnetic heating of biological tissue with application to hyperthermic cancer therapy. IEEE Trans. Bio-med. Eng. 30, 797–805 (1983).
Collins, C. M. et al. Temperature and SAR calculations for a human head within volume and surface coils at 64 and 300 MHz. J. Magn. Reson. Imaging JMRI 19, 650–656. https://doi.org/10.1002/jmri.20041 (2004).
Van Leeuwen, G. M. et al. Calculation of change in brain temperatures due to exposure to a mobile phone. Phys. Med. Biol. 44, 2367–2379 (1999).
Cetingul, M. P. & Herman, C. A heat transfer model of skin tissue for the detection of lesions: sensitivity analysis. Phys. Med. Biol. 55, 5933–5951. https://doi.org/10.1088/0031-9155/55/19/020 (2010).
Ma, J., Yang, X., Sun, Y. & Yang, J. Thermal damage in three-dimensional vivo bio-tissues induced by moving heat sources in laser therapy. Sci. Rep. 9, 10987. https://doi.org/10.1038/s41598-019-47435-7 (2019).
Bowman, H. F., Cravalho, E. G. & Woods, M. Theory, measurement, and application of thermal properties of biomaterials. Annu. Rev. Biophys. Bioeng. 4, 43–80. https://doi.org/10.1146/annurev.bb.04.060175.000355 (1975).
Soerensen, D., Clausen, S., Mercer, J. & Pedersen, L. Determining the emissivity of pig skin for accurate infrared thermography. Comput. Electron. Agric. 109, 52–58 (2014).
Jiang, S. C., Ma, N., Li, H. J. & Zhang, X. X. Effects of thermal properties and geometrical dimensions on skin burn injuries. Burns 28, 713–717. https://doi.org/10.1016/S0305-4179(02)00104-3 (2002).
Bashkatov, A. N., Genina, E. A., Kochubey, V. I. & Tuchin, V. V. Optical properties of human skin, subcutaneous and mucous tissues in the wavelength range from 400 to 2000 nm. J. Phys. D Appl. Phys. 38, 2543–2555. https://doi.org/10.1088/0022-3727/38/15/004 (2005).
Filatova, S. A., Shcherbakov, I. A. & Tsvetkov, V. B. Optical properties of animal tissues in the wavelength range from 350 to 2600 nm. vol 22. (SPIE, Bellingham, 2017).
Acknowledgments
This research was supported in part by the National Institutes of Health Grants (R01 CA171651, U54 CA199092, R01 EB021048, P50 CA094056, P30 CA091842, S10 OD020129, S10 OD016237, S10 OD027042, and S10 OD025264), the Department of Defense Breast Cancer Research Program (W81XWH-16-1-0286), and the Alvin J. Siteman Cancer Center Investment Program Research Development Award. CO was supported by a W. M. Keck Foundation Postdoctoral Research Fellowship.
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C.M.O. and H.M. contributed to experimental design, data collection, image processing and analysis, statistics, interpretation, construction of figures, and writing. L.S. contributed to experimental design, data collection, data interpretation, construction of figures, and writing. J.C. conducted thermal simulations and contributed to the construction of figures and writing. P.G. contributed to data analysis and construction of figures. H.Z. contributed to data collection. K.B. contributed to data collection, data analysis, and construction of figures. S.M. contributed to experiment design, data collection, data interpretation, and writing. G.S. contributed to experimental design and data collection. C.B. and C.B. conceived of the FDTI idea and contributed to experimental design, image analysis, and interpretation. S.A. initiated research, co-conceived FDTI implementation, contributed to experimental design, data interpretation, construction of figures, and writing.
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O’Brien, C.M., Meng, H., Shmuylovich, L. et al. Focal dynamic thermal imaging for label-free high-resolution characterization of materials and tissue heterogeneity. Sci Rep 10, 12549 (2020). https://doi.org/10.1038/s41598-020-69362-8
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DOI: https://doi.org/10.1038/s41598-020-69362-8
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