基于深度学习的肾脏肿瘤检测增强型决策支持系统

Taha ETEM , Mustafa TEKE
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引用次数: 0

摘要

本研究提出了一种基于深度学习的高精度肾癌检测决策支持系统。研究利用了一个包含 10,000 张 CT 图像的相对较大的数据集,其中包括健康肾脏扫描图像和检测到肿瘤的肾脏扫描图像。经过数据预处理和优化后,对各种深度学习模型进行了评估,其中 DenseNet-201 表现最佳,准确率达到 99.75%。该研究比较了不同学习率下的多种深度学习架构,包括 AlexNet、EfficientNet、Darknet-53、Xception 和 DenseNet-201。使用混淆矩阵分析了准确度、精确度、灵敏度、F1-分数和特异性等性能指标。所提出的系统优于不同的深度学习网络,在肾癌检测方面表现出更高的准确性。这一改进归功于有效的数据工程和深度学习网络的超参数优化。这项研究为肾癌的早期快速诊断提供了强大的决策支持工具,从而为医学图像分析领域做出了贡献。所提议系统的高准确性和高效率使其成为临床环境中医护人员的理想助手。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced deep learning based decision support system for kidney tumour detection

This study presents a high-accuracy deep learning-based decision support system for kidney cancer detection. The research utilizes a relatively large dataset of 10,000 CT images, including both healthy and tumour-detected kidney scans. After data preprocessing and optimization, various deep learning models were evaluated, with DenseNet-201 emerging as the top performer, achieving an accuracy of 99.75 %. The study compares multiple deep learning architectures, including AlexNet, EfficientNet, Darknet-53, Xception, and DenseNet-201, across different learning rates. Performance metrics such as accuracy, precision, sensitivity, F1-score, and specificity are analysed using confusion matrices. The proposed system outperforms different deep learning networks, demonstrating superior accuracy in kidney cancer detection. The improvement is attributed to effective data engineering and hyperparameter optimization of the deep learning networks. This research contributes to the field of medical image analysis by providing a robust decision support tool for early and rapid diagnosis of kidney cancer. The high accuracy and efficiency of the proposed system make it a promising aid for healthcare professionals in clinical settings.

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