The efficacy of a machine learning algorithm for assessing tumour components as a prognostic marker of surgically resected stage IA lung adenocarcinoma

Author:

Terada Yukihiro12ORCID,Isaka Mitsuhiro1,Kawata Takuya3,Mizuno Kiyomichi1,Muramatsu Koji3,Katsumata Shinya1,Konno Hayato1,Nagata Toshiyuki1,Mizuno Tetsuya1,Serizawa Masakuni4,Ono Akira5,Sugino Takashi3,Shimizu Kimihiro2,Ohde Yasuhisa1

Affiliation:

1. Division of Thoracic Surgery, Shizuoka Cancer Center , Shizuoka , Japan

2. Division of Thoracic Surgery, Shinshu University School of Medicine , Nagano , Japan

3. Division of Pathology, Shizuoka Cancer Center , Shizuoka , Japan

4. Drug Discovery and Development Division, Research Institute, Shizuoka Cancer Center , Shizuoka , Japan

5. Division of Thoracic Oncology, Shizuoka Cancer Center , Shizuoka , Japan

Abstract

Abstract Background The importance of the stromal components in tumour progression has been discussed widely, but their prognostic role in small size tumours with lepidic components is not fully understood. Applying digital tissue image analysis to whole-slide imaging may enhance the accuracy and reproducibility of pathological assessment. This study aimed to evaluate the prognostic value of tumour components of lung adenocarcinoma by measuring the dimensions of the tumour consisting elements separately, using a machine learning algorithm. Methods Between September 2002 and December 2016, 317 patients with surgically resected, pathological stage IA adenocarcinoma with lepidic components were analysed. We assessed the whole tumour area, including the lepidic components, and measured the epithelium, collagen, elastin areas and alveolar air space. We analysed the prognostic impact of each tumour component. Results The dimensions of the epithelium and collagen areas were independent significant risk factors for recurrence-free survival (hazard ratio, 8.38; 95% confidence interval, 1.14–61.88; P = 0.037, and hazard ratio, 2.58; 95% confidence interval, 1.14–5.83; P = 0.022, respectively). According to the subgroup analysis when combining the epithelium and collagen areas as risk factors, patients with tumours consisting of both large epithelium and collagen areas showed significantly poor prognoses (P = 0.002). Conclusions We assessed tumour components using a machine learning algorithm to stratify the post-operative prognosis of surgically resected stage IA adenocarcinomas. This method might guide the selection of patients with a high risk of recurrence.

Funder

Japan Society for the Promotion of Science

Publisher

Oxford University Press (OUP)

Subject

Cancer Research,Radiology, Nuclear Medicine and imaging,Oncology,General Medicine

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