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Rapid intraoperative histology of unprocessed surgical specimens via fibre-laser-based stimulated Raman scattering microscopy


Conventional methods for intraoperative histopathologic diagnosis are labour- and time-intensive, and may delay decision-making during brain-tumour surgery. Stimulated Raman scattering (SRS) microscopy, a label-free optical process, has been shown to rapidly detect brain-tumour infiltration in fresh, unprocessed human tissues. Here, we demonstrate the first application of SRS microscopy in the operating room using a portable fibre-laser-based microscope and unprocessed specimens from 101 neurosurgical patients. We also introduce an image-processing method—stimulated Raman histology (SRH)—that leverages SRS images to create virtual haematoxylin-and-eosin-stained slides, revealing essential diagnostic features. In a simulation of intraoperative pathologic consultation in 30 patients, we found a remarkable concordance of SRH and conventional histology for predicting diagnosis (Cohen’s kappa, κ > 0.89), with accuracy exceeding 92%. We also built and validated a multilayer perceptron based on quantified SRH image attributes that predicts brain-tumour subtype with 90% accuracy. Our findings provide insight into how SRH can now be used to improve the surgical care of brain-tumour patients.

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Figure 1: Engineering a clinical SRS microscope.
Figure 2: Creating virtual H&E slides with the clinical SRS microscope.
Figure 3: Imaging of key diagnostic histoarchitectural features with SRH.
Figure 4: SRH reveals structural heterogeneity in human brain tumours.
Figure 5: Simulation of intraoperative histologic diagnosis with SRH.
Figure 6: MLP classification of SRH images.
Figure 7: MLP-based diagnostic prediction.

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The authors would like to thank H. Wagner for manuscript editing. Research reported in this publication was supported by the National Institute of Biomedical Imaging and Bioengineering (R01EB017254 to X.S.X. and D.A.O.), National Institute of Neurologic Disorders and Stroke (K08NS087118 to S.H.R.), the National Institutes of Health Director’s Transformative Research Award Program T-R01 (R01EB010244-01 to X.S.X.) and the National Cancer Institute of the National Institutes of Health (P30CA046592). This work was also supported by Fast Forward Medical Innovation, the University of Michigan—Michigan Translational Research and Commercialization for Life Sciences Program (U-M MTRAC) and the Michigan Institute for Clinical and Health Research (2UL1TR000433).

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Authors and Affiliations



D.A.O., B.P., Y.S.N., C.W.F., J.K.T., T.C.H. and S.C.-P. conceived the study, designed the experiments and wrote the paper; they were assisted by M.G. and X.S.X., who provided guidance on the study design. D.A.O., S.L. and M.G. performed the SRH imaging of all specimens. C.W.F. and J.K.T. built the SRS microscope. B.P., Y.S.N., J.B. and T.D.J. analysed the data. S.C.-P., K.A.M., S.H.R., M.S., S.V., A.P.L. and A.F.-H. interpreted microscopic images and revised the manuscript. T.D.J., D.A.W. and Y.S.N. performed the statistical analyses. D.A.O., S.L.H.-J., H.J.L.G., J.A.H., C.O.M. and O.S. provided surgical specimens for imaging. All authors reviewed and edited the manuscript.

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Correspondence to Daniel A. Orringer or Sandra Camelo-Piragua.

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Competing interests

X.S.X. and D.A.O. are advisers and shareholders of Invenio Imaging, Inc., a company developing SRS microscopy systems. C.W.F. and J.K.T. are employees and shareholders of Invenio Imaging, Inc.

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Orringer, D., Pandian, B., Niknafs, Y. et al. Rapid intraoperative histology of unprocessed surgical specimens via fibre-laser-based stimulated Raman scattering microscopy. Nat Biomed Eng 1, 0027 (2017).

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