Class Imbalanced Medical Image Classification with Complication Data

Daiki Matsuno, Ryo Fujii, Hideo Saito

研究成果: Conference contribution

抄録

This paper addresses the task of class-imbalanced medical image classification using complication labels. Medical image classification plays an essential role in improving patient care and reducing the burden on healthcare systems, along with other computer aided diagnosis tasks. However, there are two common obstacles with medical image image classification. One is that there is a high cost of acquiring annotations from doctors/experts. Two is that in many cases there is a differences in the number of incidents that appear per symptom which lead to class-imbalance. The above factors make medical image classification difficult to deal with. Additionally, there are cases where multiple symptoms appear in a mixed manner (complications), such as diabetic complications where both symptoms of infection and ischaemia could appear at the same time, which also could influence the classification result negatively. In this paper, a method that jointly tackles the obstacles mentioned above is presented. First, we conduct extensive experiment with various class-imbalanced learning methods introduced in previous works and also propose a method that improves the baseline class-imbalanced approaches by utilizing complication labels in pre-training. Second, we validate the proposed method with the diabetic foot ulcer dataset introduced in Diabetic Foot Ulcer Challenge 2021.

本文言語English
ホスト出版物のタイトルLifeTech 2022 - 2022 IEEE 4th Global Conference on Life Sciences and Technologies
出版社Institute of Electrical and Electronics Engineers Inc.
ページ386-390
ページ数5
ISBN(電子版)9781665419048
DOI
出版ステータスPublished - 2022
イベント4th IEEE Global Conference on Life Sciences and Technologies, LifeTech 2022 - Osaka, Japan
継続期間: 2022 3月 72022 3月 9

出版物シリーズ

名前LifeTech 2022 - 2022 IEEE 4th Global Conference on Life Sciences and Technologies

Conference

Conference4th IEEE Global Conference on Life Sciences and Technologies, LifeTech 2022
国/地域Japan
CityOsaka
Period22/3/722/3/9

ASJC Scopus subject areas

  • 農業および生物科学(その他)
  • 人工知能
  • コンピュータ サイエンスの応用
  • コンピュータ ビジョンおよびパターン認識
  • 生体医工学
  • 器械工学
  • 教育

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