1. DeepRePath: Identifying the Prognostic Features of Early-Stage Lung Adenocarcinoma Using Multi-Scale Pathology Images and Deep Convolutional Neural Networks
- Author
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Gyeongyun Lee, Won Sang Shim, Jae Jun Kim, Yeoun Eun Sung, Sang Hoon Chun, Yoon Ho Ko, Mi Hyoung Moon, Soon Auck Hong, Seok Whan Moon, Sung-Soo Park, Sae Jung Na, Ho Jung An, Kwangil Yim, Ji Hyung Hong, Tae-Jung Kim, and Seoree Kim
- Subjects
0301 basic medicine ,Cancer Research ,Pathology ,medicine.medical_specialty ,H&E stain ,Convolutional neural network ,Article ,03 medical and health sciences ,0302 clinical medicine ,Cancer genome ,Medicine ,Stage (cooking) ,Lung cancer ,RC254-282 ,Lung ,business.industry ,Deep learning ,pathology image ,deep learning ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,medicine.disease ,lung adenocarcinoma ,030104 developmental biology ,medicine.anatomical_structure ,Oncology ,030220 oncology & carcinogenesis ,Adenocarcinoma ,Artificial intelligence ,prognosis ,business - Abstract
Simple Summary Pathology images are vital for understanding solid cancers. In this study, we created DeepRePath using multi-scale pathology images with two-channel deep learning to predict the prognosis of patients with early-stage lung adenocarcinoma (LUAD). DeepRePath demonstrated that it could predict the recurrence of early-stage LUAD with average area under the curve scores of 0.77 and 0.76 in cohort I and cohort II (external validation set), respectively. Pathological features found to be associated with a high probability of recurrence included tumor necrosis, discohesive tumor cells, and atypical nuclei. In conclusion, DeepRePath can improve the treatment modality for patients with early-stage LUAD through recurrence prediction. Abstract The prognosis of patients with lung adenocarcinoma (LUAD), especially early-stage LUAD, is dependent on clinicopathological features. However, its predictive utility is limited. In this study, we developed and trained a DeepRePath model based on a deep convolutional neural network (CNN) using multi-scale pathology images to predict the prognosis of patients with early-stage LUAD. DeepRePath was pre-trained with 1067 hematoxylin and eosin-stained whole-slide images of LUAD from the Cancer Genome Atlas. DeepRePath was further trained and validated using two separate CNNs and multi-scale pathology images of 393 resected lung cancer specimens from patients with stage I and II LUAD. Of the 393 patients, 95 patients developed recurrence after surgical resection. The DeepRePath model showed average area under the curve (AUC) scores of 0.77 and 0.76 in cohort I and cohort II (external validation set), respectively. Owing to low performance, DeepRePath cannot be used as an automated tool in a clinical setting. When gradient-weighted class activation mapping was used, DeepRePath indicated the association between atypical nuclei, discohesive tumor cells, and tumor necrosis in pathology images showing recurrence. Despite the limitations associated with a relatively small number of patients, the DeepRePath model based on CNNs with transfer learning could predict recurrence after the curative resection of early-stage LUAD using multi-scale pathology images.
- Published
- 2021