Literature DB >> 35449398

Machine learning for rhabdomyosarcoma histopathology.

Arthur O Frankel1, Melvin Lathara2, Celine Y Shaw1, Owen Wogmon1, Jacob M Jackson1, Mattie M Clark1, Navah Eshraghi1, Stephanie E Keenen1, Andrew D Woods1, Reshma Purohit1, Yukitomo Ishi3, Nirupama Moran4, Mariko Eguchi5, Farhat Ul Ain Ahmed6, Sara Khan7, Maria Ioannou8, Konstantinos Perivoliotis9, Pin Li10, Huixia Zhou10, Ahmad Alkhaledi11, Elizabeth J Davis12, Danielle Galipeau13, R L Randall14, Agnieszka Wozniak15, Patrick Schoffski15, Che-Jui Lee15, Paul H Huang16, Robin L Jones16, Brian P Rubin17, Morgan Darrow18, Ganapati Srinivasa2, Erin R Rudzinski19, Sonja Chen20,21, Noah E Berlow22, Charles Keller23.   

Abstract

Correctly diagnosing a rare childhood cancer such as sarcoma can be critical to assigning the correct treatment regimen. With a finite number of pathologists worldwide specializing in pediatric/young adult sarcoma histopathology, access to expert differential diagnosis early in case assessment is limited for many global regions. The lack of highly-trained sarcoma pathologists is especially pronounced in low to middle-income countries, where pathology expertise may be limited despite a similar rate of sarcoma incidence. To address this issue in part, we developed a deep learning convolutional neural network (CNN)-based differential diagnosis system to act as a pre-pathologist screening tool that quantifies diagnosis likelihood amongst trained soft-tissue sarcoma subtypes based on whole histopathology tissue slides. The CNN model is trained on a cohort of 424 centrally-reviewed histopathology tissue slides of alveolar rhabdomyosarcoma, embryonal rhabdomyosarcoma and clear-cell sarcoma tumors, all initially diagnosed at the originating institution and subsequently validated by central review. This CNN model was able to accurately classify the withheld testing cohort with resulting receiver operating characteristic (ROC) area under curve (AUC) values above 0.889 for all tested sarcoma subtypes. We subsequently used the CNN model to classify an externally-sourced cohort of human alveolar and embryonal rhabdomyosarcoma samples and a cohort of 318 histopathology tissue sections from genetically engineered mouse models of rhabdomyosarcoma. Finally, we investigated the overall robustness of the trained CNN model with respect to histopathological variations such as anaplasia, and classification outcomes on histopathology slides from untrained disease models. Overall positive results from our validation studies coupled with the limited worldwide availability of sarcoma pathology expertise suggests the potential of machine learning to assist local pathologists in quickly narrowing the differential diagnosis of sarcoma subtype in children, adolescents, and young adults.
© 2022. The Author(s), under exclusive licence to United States & Canadian Academy of Pathology.

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Year:  2022        PMID: 35449398     DOI: 10.1038/s41379-022-01075-x

Source DB:  PubMed          Journal:  Mod Pathol        ISSN: 0893-3952            Impact factor:   8.209


  1 in total

Review 1.  Pediatric Sarcomas: The Next Generation of Molecular Studies.

Authors:  Petros Giannikopoulos; David M Parham
Journal:  Cancers (Basel)       Date:  2022-05-20       Impact factor: 6.575

  1 in total

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