RIDGE: Reproducibility, Integrity, Dependability, Generalizability, and Efficiency Assessment of Medical Image Segmentation Models.

Farhad Maleki, Linda Moy, Reza Forghani, Tapotosh Ghosh, Katie Ovens, Steve Langer, Pouria Rouzrokh, Bardia Khosravi, Ali Ganjizadeh, Daniel Warren, Roxana Daneshjou, Mana Moassefi, Atlas Haddadi Avval, Susan Sotardi, Neil Tenenholtz, Felipe Kitamura, Timothy Kline
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Abstract

Deep learning techniques hold immense promise for advancing medical image analysis, particularly in tasks like image segmentation, where precise annotation of regions or volumes of interest within medical images is crucial but manually laborious and prone to interobserver and intraobserver biases. As such, deep learning approaches could provide automated solutions for such applications. However, the potential of these techniques is often undermined by challenges in reproducibility and generalizability, which are key barriers to their clinical adoption. This paper introduces the RIDGE checklist, a comprehensive framework designed to assess the Reproducibility, Integrity, Dependability, Generalizability, and Efficiency of deep learning-based medical image segmentation models. The RIDGE checklist is not just a tool for evaluation but also a guideline for researchers striving to improve the quality and transparency of their work. By adhering to the principles outlined in the RIDGE checklist, researchers can ensure that their developed segmentation models are robust, scientifically valid, and applicable in a clinical setting.

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RIDGE:医学图像分割模型的可重复性、完整性、可靠性、通用性和效率评估。
深度学习技术在推进医学图像分析方面大有可为,尤其是在图像分割等任务中,对医学图像中感兴趣的区域或体积进行精确标注至关重要,但人工标注费时费力,而且容易出现观察者之间和观察者内部的偏差。因此,深度学习方法可为此类应用提供自动解决方案。然而,这些技术的潜力往往被可重复性和可推广性方面的挑战所削弱,而这正是临床采用这些技术的主要障碍。本文介绍了 RIDGE 核对表,这是一个综合框架,旨在评估基于深度学习的医学影像分割模型的可重复性、完整性、可靠性、通用性和效率。RIDGE 核对表不仅是一种评估工具,也是研究人员努力提高工作质量和透明度的指南。通过遵守 RIDGE 核对表中列出的原则,研究人员可以确保其开发的分割模型具有稳健性、科学性和临床适用性。
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