Fiche publication
Date publication
décembre 2021
Journal
Scientific reports
Auteurs
Membres identifiés du Cancéropôle Est :
Pr GHIRINGHELLI François
,
Mme TRUNTZER Caroline
,
Dr DERANGERE Valentin
,
Pr BIBEAU Frédéric
Tous les auteurs :
Le Page AL, Ballot E, Truntzer C, Derangère V, Ilie A, Rageot D, Bibeau F, Ghiringhelli F
Lien Pubmed
Résumé
Histological stratification in metastatic non-small cell lung cancer (NSCLC) is essential to properly guide therapy. Morphological evaluation remains the basis for subtyping and is completed by additional immunohistochemistry labelling to confirm the diagnosis, which delays molecular analysis and utilises precious sample. Therefore, we tested the capacity of convolutional neural networks (CNNs) to classify NSCLC based on pathologic HES diagnostic biopsies. The model was estimated with a learning cohort of 132 NSCLC patients and validated on an external validation cohort of 65 NSCLC patients. Based on image patches, a CNN using InceptionV3 architecture was trained and optimized to classify NSCLC between squamous and non-squamous subtypes. Accuracies of 0.99, 0.87, 0.85, 0.85 was reached in the training, validation and test sets and in the external validation cohort. At the patient level, the CNN model showed a capacity to predict the tumour histology with accuracy of 0.73 and 0.78 in the learning and external validation cohorts respectively. Selecting tumour area using virtual tissue micro-array improved prediction, with accuracy of 0.82 in the external validation cohort. This study underlines the capacity of CNN to predict NSCLC subtype with good accuracy and to be applied to small pathologic samples without annotation.
Référence
Sci Rep. 2021 Dec 13;11(1):23912