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Convolutional neural networks can accurately distinguish four histologic growth patterns of lung adenocarcinoma in digital slides.


ABSTRACT: During the diagnostic workup of lung adenocarcinomas (LAC), pathologists evaluate distinct histological tumor growth patterns. The percentage of each pattern on multiple slides bears prognostic significance. To assist with the quantification of growth patterns, we constructed a pipeline equipped with a convolutional neural network (CNN) and soft-voting as the decision function to recognize solid, micropapillary, acinar, and cribriform growth patterns, and non-tumor areas. Slides of primary LAC were obtained from Cedars-Sinai Medical Center (CSMC), the Military Institute of Medicine in Warsaw and the TCGA portal. Several CNN models trained with 19,924 image tiles extracted from 78 slides (MIMW and CSMC) were evaluated on 128 test slides from the three sites by F1-score and accuracy using manual tumor annotations by pathologist. The best CNN yielded F1-scores of 0.91 (solid), 0.76 (micropapillary), 0.74 (acinar), 0.6 (cribriform), and 0.96 (non-tumor) respectively. The overall accuracy of distinguishing the five tissue classes was 89.24%. Slide-based accuracy in the CSMC set (88.5%) was significantly better (p?

SUBMITTER: Gertych A 

PROVIDER: S-EPMC6365499 | biostudies-literature | 2019 Feb

REPOSITORIES: biostudies-literature

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Convolutional neural networks can accurately distinguish four histologic growth patterns of lung adenocarcinoma in digital slides.

Gertych Arkadiusz A   Swiderska-Chadaj Zaneta Z   Ma Zhaoxuan Z   Ing Nathan N   Markiewicz Tomasz T   Cierniak Szczepan S   Salemi Hootan H   Guzman Samuel S   Walts Ann E AE   Knudsen Beatrice S BS  

Scientific reports 20190206 1


During the diagnostic workup of lung adenocarcinomas (LAC), pathologists evaluate distinct histological tumor growth patterns. The percentage of each pattern on multiple slides bears prognostic significance. To assist with the quantification of growth patterns, we constructed a pipeline equipped with a convolutional neural network (CNN) and soft-voting as the decision function to recognize solid, micropapillary, acinar, and cribriform growth patterns, and non-tumor areas. Slides of primary LAC w  ...[more]

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