Clinical Usefulness of Machine Learning Approaches as a Non-Invasive Technology in Reducing Hepatitis Disease Mortality

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Abstract

Hepatitis is a viral infection that causes inflammation of the liver. However, other factors can cause the disease, including secondary effects from drugs, toxins, alcohol, and autoimmune hepatitis. The autoimmune form of the disease occurs when the body produces antibodies against the liver tissue, and many people worldwide are affected by it. Various clinical factors and parameters are examined in diagnosing hepatitis disease, which is analyzed by performing various tests of these factors and parameters. As a result of the vastness of the parameters under examination, it is challenging and complicated for the experts in this field to perform the analysis process on these parameters on a large scale. Healthcare experts can now identify the factors influencing the death rate of patients with high speed and accuracy thanks to emerging technologies such as machine learning, which is a subset of artificial intelligence. In this study, KNN and SVM machine learning techniques were used to analyze the positive effect of clinical parameters such as LIVER BIG, LIVER FIRM, SPLEEN PALPABLE, and ANOREXIA on patients' survival or death rates. This study investigates and analyzes the results of the implementation in two parts. The first part deals with determining the positive impact of these clinical parameters on the death and survival rate of patients, and the second part examines the performance of machine learning techniques based on the evaluation criteria of accuracy (ACC), error rate (ERR), specificity (SPE), and negative prediction value (NPV).Based on the implementation finding of machine learning techniques on data related to hepatitis patients, it has been determined that patients with positive LIVER BIG, LIVER FIRM, SPLEEN PALPABLE, and ANOREXIA clinical parameters can have a high chance of survival. On the other side, The SVM technique outperformed the KNN technique by ACC 94.05%, ERR 16.02%, SPE 93.07%, and NPV 85.7% in an analysis of the performance of machine learning techniques.
机器学习方法作为一种非侵入性技术在降低肝炎死亡率方面的临床实用性
肝炎是一种病毒感染,会导致肝脏发炎。然而,其他因素也会导致该疾病,包括药物、毒素、酒精和自身免疫性肝炎的继发影响。当人体产生针对肝脏组织的抗体时,就会发生自身免疫性肝炎,全世界有许多人受到这种疾病的影响。在诊断肝炎疾病时要检查各种临床因素和参数,并通过对这些因素和参数进行各种检测来分析。由于检查的参数繁多,该领域的专家要对这些参数进行大规模的分析过程既具有挑战性又十分复杂。现在,医疗专家可以借助机器学习等新兴技术,高速、准确地识别影响患者死亡率的因素,而机器学习是人工智能的一个子集。在本研究中,KNN 和 SVM 机器学习技术被用于分析肝大、肝硬变、脾脏肿大和贫血等临床参数对患者生存率或死亡率的积极影响。本研究分两部分对实施结果进行调查和分析。第一部分是确定这些临床参数对患者死亡率和存活率的积极影响,第二部分是根据准确率(ACC)、错误率(ERR)、特异性(SPE)和负预测值(NPV)的评估标准来检查机器学习技术的性能。根据机器学习技术在肝炎患者相关数据上的实施结果,确定 LIVER BIG、LIVER FIRM、SPLEEN PALPABLE 和 ANOREXIA 临床参数为阳性的患者存活几率较高。另一方面,在机器学习技术的性能分析中,SVM 技术的 ACC 94.05%、ERR 16.02%、SPE 93.07% 和 NPV 85.7% 均优于 KNN 技术。
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