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[论文]郑宇军等人.Tridirectional Transfer Learning for Predicting Gastric Cancer Morbidity

时间:2021-08-07 23:03:28 文章来源 :学科 浏览量:0

Tridirectional Transfer Learning for Predicting Gastric Cancer Morbidity

By

Song, Q (Song, Qin) Zheng, YJ (Zheng, Yu-Jun) Sheng, WG (Sheng, Wei-Guo) Yang, J (Yang, Jun) (provided by Clarivate)

Volume

32

Issue

2

Page

561-574

DOI

10.1109/TNNLS.2020.2979486

Published

FEB 2021

Document Type

Article

Abstract

Our previous study has constructed a deep learning model for predicting gastrointestinal infection morbidity based on environmental pollutant indicators in some regions in central China. This article aims to adapt the prediction model for three purposes: 1) predicting the morbidity of a different disease in the same region; 2) predicting the morbidity of the same disease in a different region; and 3) predicting the morbidity of a different disease in a different region. We propose a tridirectional transfer learning approach, which achieves the abovementioned three purposes by: 1) developing a combined univariate regression and multivariate Gaussian model for establishing the relationship between the morbidity of the target disease and that of the source disease together with the high-level pollutant features in the current source region; 2) using mapping-based deep transfer learning to extend the current model to predict the morbidity of the source disease in both source and target regions; and 3) applying the pattern of the combined model in the source region to the extended model to derive a new combined model for predicting the morbidity of the target disease in the target region. We select gastric cancer as the target disease and use the proposed transfer learning approach to predict its morbidity in the source region and three target regions. The results show that, given only a limited number of labeled samples, our approach achieves an average prediction accuracy of over 80% in the source region and up to 78% in the target regions, which can contribute considerably to improving medical preparedness and response.