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ContraSurv: Enhancing Prognostic Assessment of Medical Images via Data-Efficient Weakly Supervised Contrastive Learning. | LitMetric

AI Article Synopsis

  • Prognostic assessment is challenging in medicine due to limited labeled data, prompting the development of ContraSurv, a weakly-supervised learning framework using contrastive learning to improve predictions from 3D medical images.* -
  • ContraSurv leverages self-supervised information from unlabeled data and weakly-supervised cues from censored data, incorporating a specialized Vision Transformer architecture and innovative contrastive learning methods.* -
  • The framework was tested on three cancer types and two imaging modalities, demonstrating superior performance compared to existing methods, especially in datasets with high censoring rates.*

Article Abstract

Prognostic assessment remains a critical challenge in medical research, often limited by the lack of well-labeled data. In this work, we introduce ContraSurv, a weakly-supervised learning framework based on contrastive learning, designed to enhance prognostic predictions in 3D medical images. ContraSurv utilizes both the self-supervised information inherent in unlabeled data and the weakly-supervised cues present in censored data, refining its capacity to extract prognostic representations. For this purpose, we establish a Vision Transformer architecture optimized for our medical image datasets and introduce novel methodologies for both self-supervised and supervised contrastive learning for prognostic assessment. Additionally, we propose a specialized supervised contrastive loss function and introduce SurvMix, a novel data augmentation technique for survival analysis. Evaluations were conducted across three cancer types and two imaging modalities on three real-world datasets. The results confirmed the enhanced performance of ContraSurv over competing methods, particularly in data with a high censoring rate.

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Source
http://dx.doi.org/10.1109/JBHI.2024.3484991DOI Listing

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