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Near real-time intraoperative brain tumor diagnosis using stimulated Raman histology and deep neural networks.

Authors :
Hollon TC
Pandian B
Adapa AR
Urias E
Save AV
Khalsa SSS
Eichberg DG
D'Amico RS
Farooq ZU
Lewis S
Petridis PD
Marie T
Shah AH
Garton HJL
Maher CO
Heth JA
McKean EL
Sullivan SE
Hervey-Jumper SL
Patil PG
Thompson BG
Sagher O
McKhann GM 2nd
Komotar RJ
Ivan ME
Snuderl M
Otten ML
Johnson TD
Sisti MB
Bruce JN
Muraszko KM
Trautman J
Freudiger CW
Canoll P
Lee H
Camelo-Piragua S
Orringer DA
Source :
Nature medicine [Nat Med] 2020 Jan; Vol. 26 (1), pp. 52-58. Date of Electronic Publication: 2020 Jan 06.
Publication Year :
2020

Abstract

Intraoperative diagnosis is essential for providing safe and effective care during cancer surgery <superscript>1</superscript> . The existing workflow for intraoperative diagnosis based on hematoxylin and eosin staining of processed tissue is time, resource and labor intensive <superscript>2,3</superscript> . Moreover, interpretation of intraoperative histologic images is dependent on a contracting, unevenly distributed, pathology workforce <superscript>4</superscript> . In the present study, we report a parallel workflow that combines stimulated Raman histology (SRH) <superscript>5-7</superscript> , a label-free optical imaging method and deep convolutional neural networks (CNNs) to predict diagnosis at the bedside in near real-time in an automated fashion. Specifically, our CNNs, trained on over 2.5 million SRH images, predict brain tumor diagnosis in the operating room in under 150 s, an order of magnitude faster than conventional techniques (for example, 20-30 min) <superscript>2</superscript> . In a multicenter, prospective clinical trial (n = 278), we demonstrated that CNN-based diagnosis of SRH images was noninferior to pathologist-based interpretation of conventional histologic images (overall accuracy, 94.6% versus 93.9%). Our CNNs learned a hierarchy of recognizable histologic feature representations to classify the major histopathologic classes of brain tumors. In addition, we implemented a semantic segmentation method to identify tumor-infiltrated diagnostic regions within SRH images. These results demonstrate how intraoperative cancer diagnosis can be streamlined, creating a complementary pathway for tissue diagnosis that is independent of a traditional pathology laboratory.

Details

Language :
English
ISSN :
1546-170X
Volume :
26
Issue :
1
Database :
MEDLINE
Journal :
Nature medicine
Publication Type :
Academic Journal
Accession number :
31907460
Full Text :
https://doi.org/10.1038/s41591-019-0715-9