肝脏肿瘤预测的数学模型分析

C. Geetha, A. Arunachalam
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引用次数: 0

摘要

人类肝脏疾病是一种遗传问题,由饮酒过多或被病毒感染引起。如果没有在早期阶段诊断出来,它可能导致肝脏疾病或癌症。本文提出了一种预测病人将来患某种疾病的可能性的方法。该决定是基于现有的比较证据和所有其他物理参数保持不变的假设。尽管技术进步已经导致收集与各种疾病状态患者相关的数据,但评估机器学习算法的预测效率是至关重要的一步。许多现实世界的数据库,包括肝病诊断数据,都存在类不平衡的问题。参数的基本本质是通过属性的核心倾向的多样性来感知的。为了捕捉属性的随机趋势,利用布朗运动框架建立了预测模型。使用Spearman相关系数证明了关键血液属性在肝脏疾病中的贡献,该系数检查了不同血液参数与结果之间的相关性,得到了改进。本文讨论了肝肿瘤预测的统计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Model Analysis for Liver Tumor Prediction
Human liver disease is a genetic problem caused by drinking too much alcohol or being infected by a virus. If not diagnosed in the early stages, it can lead to liver disease or cancer. This paper proposes a method for predicting the likelihood of a patient developing a certain illness in the future. The decision is based on comparative evidence available and the assumption that all other physical parameters remain unchanged. Despite the fact that technical advancements have resulted in the collection of data pertaining to patients with various disease states, assessing the prediction efficiency of machine learning algorithms is a crucial step. Many real-world databases, including liver disease diagnosis data, have a problem with class imbalance. The fundamental essence of the parameters is perceived by the diversity in the core propensity of the attributes. To catch the random trends of the attributes, the prediction model is formulated using the Brownian motion framework. The contribution of the key blood attributes in liver disease is demonstrated using Spearman's correlation coefficient, which examines the correlation between different blood parameters and the result, is improved. This paper discusses about the statistical methods used to forecast liver tumor.
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