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利用基于 Resnet 50 的 Grad-CAM 的可解释人工智能增强 MRI 图像中的脑瘤检测。

Enhancing brain tumor detection in MRI images through explainable AI using Grad-CAM with Resnet 50.

机构信息

Al-Ameen Engineering College (Autonomous), Erode, Tamil Nadu, India.

Department of Computer Science and Engineering, JAIN (Deemed-to-be University), Bengaluru, 562112, India.

出版信息

BMC Med Imaging. 2024 May 11;24(1):107. doi: 10.1186/s12880-024-01292-7.

DOI:10.1186/s12880-024-01292-7
PMID:38734629
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11088067/
Abstract

This study addresses the critical challenge of detecting brain tumors using MRI images, a pivotal task in medical diagnostics that demands high accuracy and interpretability. While deep learning has shown remarkable success in medical image analysis, there remains a substantial need for models that are not only accurate but also interpretable to healthcare professionals. The existing methodologies, predominantly deep learning-based, often act as black boxes, providing little insight into their decision-making process. This research introduces an integrated approach using ResNet50, a deep learning model, combined with Gradient-weighted Class Activation Mapping (Grad-CAM) to offer a transparent and explainable framework for brain tumor detection. We employed a dataset of MRI images, enhanced through data augmentation, to train and validate our model. The results demonstrate a significant improvement in model performance, with a testing accuracy of 98.52% and precision-recall metrics exceeding 98%, showcasing the model's effectiveness in distinguishing tumor presence. The application of Grad-CAM provides insightful visual explanations, illustrating the model's focus areas in making predictions. This fusion of high accuracy and explainability holds profound implications for medical diagnostics, offering a pathway towards more reliable and interpretable brain tumor detection tools.

摘要

这项研究解决了使用 MRI 图像检测脑肿瘤的关键挑战,这是医学诊断中的一项关键任务,需要高度的准确性和可解释性。虽然深度学习在医学图像分析中已经取得了显著的成功,但仍然需要不仅准确而且对医疗保健专业人员具有可解释性的模型。现有的方法主要基于深度学习,通常充当黑盒,对其决策过程几乎没有洞察力。本研究引入了一种使用 ResNet50 的集成方法,这是一种深度学习模型,结合了梯度加权类激活映射 (Grad-CAM),为脑肿瘤检测提供了一个透明和可解释的框架。我们使用经过数据增强的 MRI 图像数据集来训练和验证我们的模型。结果表明,模型性能有了显著提高,测试准确率达到 98.52%,精度-召回率指标超过 98%,展示了该模型在区分肿瘤存在方面的有效性。Grad-CAM 的应用提供了有见地的可视化解释,说明了模型在进行预测时的重点区域。这种高精度和可解释性的融合对医学诊断具有深远的意义,为更可靠和可解释的脑肿瘤检测工具提供了一条途径。

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