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使用 Resnet 重缩放和支持向量机(Resnet-RS-SVM)诊断视网膜损伤:来自印度医院的案例研究。

Diagnosis of retinal damage using Resnet rescaling and support vector machine (Resnet-RS-SVM): a case study from an Indian hospital.

机构信息

Department of Computer Science and Engineering, VSSUT Burla, Burla, 768018, India.

Department of Computer Science and Engineering, ITER, SOA University, Bhubaneswar, Odisha, India.

出版信息

Int Ophthalmol. 2024 Apr 13;44(1):174. doi: 10.1007/s10792-024-03058-0.

DOI:10.1007/s10792-024-03058-0
PMID:38613630
Abstract

PURPOSE

This study aims to address the challenge of identifying retinal damage in medical applications through a computer-aided diagnosis (CAD) approach. Data was collected from four prominent eye hospitals in India for analysis and model development.

METHODS

Data was collected from Silchar Medical College and Hospital (SMCH), Aravind Eye Hospital (Tamil Nadu), LV Prasad Eye Hospital (Hyderabad), and Medanta (Gurugram). A modified version of the ResNet-101 architecture, named ResNet-RS, was utilized for retinal damage identification. In this modified architecture, the last layer's softmax function was replaced with a support vector machine (SVM). The resulting model, termed ResNet-RS-SVM, was trained and evaluated on each hospital's dataset individually and collectively.

RESULTS

The proposed ResNet-RS-SVM model achieved high accuracies across the datasets from the different hospitals: 99.17% for Aravind, 98.53% for LV Prasad, 98.33% for Medanta, and 100% for SMCH. When considering all hospitals collectively, the model attained an accuracy of 97.19%.

CONCLUSION

The findings demonstrate the effectiveness of the ResNet-RS-SVM model in accurately identifying retinal damage in diverse datasets collected from multiple eye hospitals in India. This approach presents a promising advancement in computer-aided diagnosis for improving the detection and management of retinal diseases.

摘要

目的

本研究旨在通过计算机辅助诊断(CAD)方法解决医学应用中识别视网膜损伤的挑战。数据来自印度四家著名的眼科医院进行分析和模型开发。

方法

数据来自印度锡尔恰尔医学院和医院(SMCH)、阿拉文眼科医院(泰米尔纳德邦)、LV 普拉沙德眼科医院(海得拉巴)和 Medanta(古尔冈)。使用一种名为 ResNet-RS 的 ResNet-101 架构的修改版本进行视网膜损伤识别。在这个修改的架构中,最后一层的 softmax 函数被替换为支持向量机(SVM)。所得模型称为 ResNet-RS-SVM,在每个医院的数据集上进行了单独和集体的训练和评估。

结果

该研究提出的 ResNet-RS-SVM 模型在来自不同医院的数据集上取得了很高的准确率:Aravind 为 99.17%,LV Prasad 为 98.53%,Medanta 为 98.33%,SMCH 为 100%。当考虑所有医院的综合数据时,模型的准确率达到了 97.19%。

结论

研究结果表明,ResNet-RS-SVM 模型在准确识别来自印度多家眼科医院的不同数据集的视网膜损伤方面具有有效性。这种方法在计算机辅助诊断方面提出了一个有前途的进展,有助于提高视网膜疾病的检测和管理。

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