使用多类机器学习模型诊断淋巴结病变

Sameena Pathan, D. Rao, Preetham Kumar
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引用次数: 0

摘要

淋巴造影术被认为是淋巴疾病预后和诊断的基石,尽管卫生技术取得了进步,但它仍然是一种黄金参考标准。然而,对淋巴管特征的分析隐性地降低了对少数恶性肿瘤如淋巴瘤、恶性淋巴管等的诊断准确性,因此,提供客观诊断的计算机辅助诊断工具(CAD)发挥着突出的作用。在本研究中,提出了鲁棒机器学习分类器在淋巴特征分类中的作用。考虑到突出的淋巴特征,获得的最高准确率为85%。在特异性和敏感性之间取得了良好的平衡。建议的系统可用于临床情况,特别是在医疗基础设施差的地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lymph Node Morbidity Diagnosis Using Multiclass Machine Learning Models
Lymphography, considered a corner stone in prognosis and diagnosis of lymphatic disorders continues to be a gold standard of reference in spite of the advancements in health technologies. However, analyzing the lymphatic characteristics implicitly curtails the diagnostic accuracy of few dreaded cancers such as lymphoma, malign lymph's etc., Thus to provide objective diagnosis computer aided diagnostic tools (CAD) play a prominent role. In this research, the role of robust machine learning classifiers in classifying lymphatic characteristics is proposed. The highest accuracy obtained by considering the prominent lymph characteristics is 85%. A good balance between specificity and sensitivity was obtained. The proposed system can be employed in a clinical scenario particularly in regions with poor medical infrastructures.
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