基于上下文相关cnn的MRI多发性硬化症分割框架。

International journal of neural systems Pub Date : 2025-03-01 Epub Date: 2024-12-13 DOI:10.1142/S0129065725500066
Giuseppe Placidi, Luigi Cinque, Gian Luca Foresti, Francesca Galassi, Filippo Mignosi, Michele Nappi, Matteo Polsinelli
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引用次数: 0

摘要

尽管在磁共振成像(MRI)中开发了几种自动识别/分割多发性硬化症(MS)病变的策略,但与人类专家的表现相比,它们始终存在不足。这强调了人类专业人员在处理由MS的模糊性和可变性、MRI对MS缺乏特异性以及MRI固有的不稳定性所导致的不确定性方面的独特技能和专业知识。医生在一定程度上依靠他们的放射学、临床和解剖学经验来管理这种不确定性。我们已经开发了一个自动化框架,通过引入一种新的方法来复制人类诊断,在MRI扫描中识别和分割MS病变,这是该领域的一个重大进步。该框架有可能彻底改变MS病变的识别和分割方式,它基于三个主要概念:(1)建模不确定性;(2)使用单独训练的卷积神经网络(cnn)进行病灶检测,同时考虑其在大脑中的背景,并确保空间连续性;(3)实现一个集成分类器来组合这些cnn的信息。所提出的框架已经在单一MRI模式上进行了训练、验证和测试,即MSSEG基准公共数据集的流体衰减反演恢复(FLAIR),该数据集包含来自7位放射科专家和一个基本事实的注释数据。与基础真理和七个人类评级器的比较表明,它的运作类似于人类评级器。同时,虽然只使用FLAIR模式,但所提出的模型比任何其他最先进的模型显示出更高的稳定性、有效性和对偏差的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Context-Dependent CNN-Based Framework for Multiple Sclerosis Segmentation in MRI.

Despite several automated strategies for identification/segmentation of Multiple Sclerosis (MS) lesions in Magnetic Resonance Imaging (MRI) being developed, they consistently fall short when compared to the performance of human experts. This emphasizes the unique skills and expertise of human professionals in dealing with the uncertainty resulting from the vagueness and variability of MS, the lack of specificity of MRI concerning MS, and the inherent instabilities of MRI. Physicians manage this uncertainty in part by relying on their radiological, clinical, and anatomical experience. We have developed an automated framework for identifying and segmenting MS lesions in MRI scans by introducing a novel approach to replicating human diagnosis, a significant advancement in the field. This framework has the potential to revolutionize the way MS lesions are identified and segmented, being based on three main concepts: (1) Modeling the uncertainty; (2) Use of separately trained Convolutional Neural Networks (CNNs) optimized for detecting lesions, also considering their context in the brain, and to ensure spatial continuity; (3) Implementing an ensemble classifier to combine information from these CNNs. The proposed framework has been trained, validated, and tested on a single MRI modality, the FLuid-Attenuated Inversion Recovery (FLAIR) of the MSSEG benchmark public data set containing annotated data from seven expert radiologists and one ground truth. The comparison with the ground truth and each of the seven human raters demonstrates that it operates similarly to human raters. At the same time, the proposed model demonstrates more stability, effectiveness and robustness to biases than any other state-of-the-art model though using just the FLAIR modality.

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