Generalizing deep learning models for medical image classification
- URL: http://arxiv.org/abs/2403.12167v2
- Date: Thu, 21 Mar 2024 16:38:33 GMT
- Title: Generalizing deep learning models for medical image classification
- Authors: Matta Sarah, Lamard Mathieu, Zhang Philippe, Alexandre Le Guilcher, Laurent Borderie, Béatrice Cochener, Gwenolé Quellec,
- Abstract summary: We review recent developments in generalization methods for Deep Learning (DL)-based classification models.
We also discuss future challenges, including the need for improved evaluation protocols and benchmarks.
- Score: 36.2143325805188
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Numerous Deep Learning (DL) models have been developed for a large spectrum of medical image analysis applications, which promises to reshape various facets of medical practice. Despite early advances in DL model validation and implementation, which encourage healthcare institutions to adopt them, some fundamental questions remain: are the DL models capable of generalizing? What causes a drop in DL model performances? How to overcome the DL model performance drop? Medical data are dynamic and prone to domain shift, due to multiple factors such as updates to medical equipment, new imaging workflow, and shifts in patient demographics or populations can induce this drift over time. In this paper, we review recent developments in generalization methods for DL-based classification models. We also discuss future challenges, including the need for improved evaluation protocols and benchmarks, and envisioned future developments to achieve robust, generalized models for medical image classification.
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