Identification of Cancer: Mesothelioma’s Disease Using Logistic Regression and Association Rule

Avishek Choudhury
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引用次数: 15

Abstract

Malignant Pleural Mesothelioma (MPM) or malignant mesothelioma (MM) is an atypical, aggressive tumor that matures into cancer in the pleura, a stratum of tissue bordering the lungs. Diagnosis of MPM is difficult and it accounts for about seventy-five percent of all mesothelioma diagnosed yearly in the United States of America. Being a fatal disease, early identification of MPM is crucial for patient survival. Our study implements logistic regression and develops association rules to identify early stage symptoms of MM. We retrieved medical reports generated by Dicle University and implemented logistic regression to measure the model accuracy. We conducted (a) logistic correlation, (b) Omnibus test and (c) Hosmer and Lemeshow test for model evaluation. Moreover, we also developed association rules by confidence, rule support, lift, condition support and deployability. Categorical logistic regression increases the training accuracy from 72.30% to 81.40% with a testing accuracy of 63.46%. The study also shows the top 5 symptoms that is mostly likely indicates the presence in MM. This study concludes that using predictive modeling can enhance primary presentation and diagnosis of MM.
使用逻辑回归和关联规则识别癌症:间皮瘤疾病
恶性胸膜间皮瘤(Malignant Pleural Mesothelioma, MPM)或恶性间皮瘤(Malignant Mesothelioma, MM)是一种非典型的侵袭性肿瘤,在胸膜(与肺交界的组织层)成熟为癌症。MPM的诊断是困难的,它占美国每年诊断的所有间皮瘤的75%。作为一种致命的疾病,早期发现对患者的生存至关重要。我们的研究采用逻辑回归并开发关联规则来识别MM的早期症状。我们检索了Dicle大学生成的医学报告,并采用逻辑回归来衡量模型的准确性。我们对模型进行了(a) logistic相关,(b) Omnibus检验和(c) Hosmer and Lemeshow检验。此外,我们还通过置信度、规则支持、提升、条件支持和可部署性开发了关联规则。分类逻辑回归将训练准确率从72.30%提高到81.40%,测试准确率为63.46%。该研究还显示了最可能提示MM存在的前5种症状。本研究得出结论,使用预测模型可以增强MM的原发性表现和诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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