Cargando…

A discrimination model by machine learning to avoid gastrectomy for early gastric cancer

AIM: Gastrectomy is recommended for patients with early gastric cancer (EGC) because the possibility of lymph node metastasis (LNM) cannot be completely denied. The aim of this study was to develop a discrimination model to select patients who do not require surgery using machine learning. METHODS:...

Descripción completa

Detalles Bibliográficos
Autores principales: Hayashi, Tsutomu, Takasawa, Ken, Yoshikawa, Takaki, Hashimoto, Taiki, Sekine, Shigeki, Wada, Takeyuki, Yamagata, Yukinori, Suzuki, Haruhisa, Abe, Seiichirou, Yoshinaga, Shigetaka, Saito, Yutaka, Kouno, Nobuji, Hamamoto, Ryuji
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10623978/
https://www.ncbi.nlm.nih.gov/pubmed/37927931
http://dx.doi.org/10.1002/ags3.12714
_version_ 1785130845783195648
author Hayashi, Tsutomu
Takasawa, Ken
Yoshikawa, Takaki
Hashimoto, Taiki
Sekine, Shigeki
Wada, Takeyuki
Yamagata, Yukinori
Suzuki, Haruhisa
Abe, Seiichirou
Yoshinaga, Shigetaka
Saito, Yutaka
Kouno, Nobuji
Hamamoto, Ryuji
author_facet Hayashi, Tsutomu
Takasawa, Ken
Yoshikawa, Takaki
Hashimoto, Taiki
Sekine, Shigeki
Wada, Takeyuki
Yamagata, Yukinori
Suzuki, Haruhisa
Abe, Seiichirou
Yoshinaga, Shigetaka
Saito, Yutaka
Kouno, Nobuji
Hamamoto, Ryuji
author_sort Hayashi, Tsutomu
collection PubMed
description AIM: Gastrectomy is recommended for patients with early gastric cancer (EGC) because the possibility of lymph node metastasis (LNM) cannot be completely denied. The aim of this study was to develop a discrimination model to select patients who do not require surgery using machine learning. METHODS: Data from 382 patients who received gastrectomy for gastric cancer and who were diagnosed with pT1b were extracted for developing a discrimination model. For the validation of this discrimination model, data from 140 consecutive patients who underwent endoscopic resection followed by gastrectomy, with a diagnosis of pT1b EGC, were extracted. We applied XGBoost to develop a discrimination model for clinical and pathological variables. The performance of the discrimination model was evaluated based on the number of cases classified as true negatives for LNM, with no false negatives for LNM allowed. RESULTS: Lymph node metastasis was observed in 95 patients (25%) in the development cohort and 11 patients (8%) in the validation cohort. The discrimination model was developed to identify 27 (7%) patients with no indications for additional surgery due to the prediction of an LNM‐negative status with no false negatives. In the validation cohort, 13 (9%) patients were identified as having no indications for additional surgery and no patients with LNM were classified into this group. CONCLUSION: The discrimination model using XGBoost algorithms could select patients with no risk of LNM from patients with pT1b EGC. This discrimination model was considered promising for clinical decision‐making in relation to patients with EGC.
format Online
Article
Text
id pubmed-10623978
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-106239782023-11-04 A discrimination model by machine learning to avoid gastrectomy for early gastric cancer Hayashi, Tsutomu Takasawa, Ken Yoshikawa, Takaki Hashimoto, Taiki Sekine, Shigeki Wada, Takeyuki Yamagata, Yukinori Suzuki, Haruhisa Abe, Seiichirou Yoshinaga, Shigetaka Saito, Yutaka Kouno, Nobuji Hamamoto, Ryuji Ann Gastroenterol Surg Original Articles AIM: Gastrectomy is recommended for patients with early gastric cancer (EGC) because the possibility of lymph node metastasis (LNM) cannot be completely denied. The aim of this study was to develop a discrimination model to select patients who do not require surgery using machine learning. METHODS: Data from 382 patients who received gastrectomy for gastric cancer and who were diagnosed with pT1b were extracted for developing a discrimination model. For the validation of this discrimination model, data from 140 consecutive patients who underwent endoscopic resection followed by gastrectomy, with a diagnosis of pT1b EGC, were extracted. We applied XGBoost to develop a discrimination model for clinical and pathological variables. The performance of the discrimination model was evaluated based on the number of cases classified as true negatives for LNM, with no false negatives for LNM allowed. RESULTS: Lymph node metastasis was observed in 95 patients (25%) in the development cohort and 11 patients (8%) in the validation cohort. The discrimination model was developed to identify 27 (7%) patients with no indications for additional surgery due to the prediction of an LNM‐negative status with no false negatives. In the validation cohort, 13 (9%) patients were identified as having no indications for additional surgery and no patients with LNM were classified into this group. CONCLUSION: The discrimination model using XGBoost algorithms could select patients with no risk of LNM from patients with pT1b EGC. This discrimination model was considered promising for clinical decision‐making in relation to patients with EGC. John Wiley and Sons Inc. 2023-07-13 /pmc/articles/PMC10623978/ /pubmed/37927931 http://dx.doi.org/10.1002/ags3.12714 Text en © 2023 The Authors. Annals of Gastroenterological Surgery published by John Wiley & Sons Australia, Ltd on behalf of The Japanese Society of Gastroenterological Surgery. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Articles
Hayashi, Tsutomu
Takasawa, Ken
Yoshikawa, Takaki
Hashimoto, Taiki
Sekine, Shigeki
Wada, Takeyuki
Yamagata, Yukinori
Suzuki, Haruhisa
Abe, Seiichirou
Yoshinaga, Shigetaka
Saito, Yutaka
Kouno, Nobuji
Hamamoto, Ryuji
A discrimination model by machine learning to avoid gastrectomy for early gastric cancer
title A discrimination model by machine learning to avoid gastrectomy for early gastric cancer
title_full A discrimination model by machine learning to avoid gastrectomy for early gastric cancer
title_fullStr A discrimination model by machine learning to avoid gastrectomy for early gastric cancer
title_full_unstemmed A discrimination model by machine learning to avoid gastrectomy for early gastric cancer
title_short A discrimination model by machine learning to avoid gastrectomy for early gastric cancer
title_sort discrimination model by machine learning to avoid gastrectomy for early gastric cancer
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10623978/
https://www.ncbi.nlm.nih.gov/pubmed/37927931
http://dx.doi.org/10.1002/ags3.12714
work_keys_str_mv AT hayashitsutomu adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT takasawaken adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT yoshikawatakaki adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT hashimototaiki adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT sekineshigeki adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT wadatakeyuki adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT yamagatayukinori adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT suzukiharuhisa adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT abeseiichirou adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT yoshinagashigetaka adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT saitoyutaka adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT kounonobuji adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT hamamotoryuji adiscriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT hayashitsutomu discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT takasawaken discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT yoshikawatakaki discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT hashimototaiki discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT sekineshigeki discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT wadatakeyuki discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT yamagatayukinori discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT suzukiharuhisa discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT abeseiichirou discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT yoshinagashigetaka discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT saitoyutaka discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT kounonobuji discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer
AT hamamotoryuji discriminationmodelbymachinelearningtoavoidgastrectomyforearlygastriccancer