基于机器学习的贫血可治愈性预测模型

Sasikala C, Ashwin M R, Dharanessh M D, D. M.
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引用次数: 0

摘要

世界卫生组织将贫血定义为红细胞数量不足,这是全球最常见的血液病。这种疾病不仅是一种症状,而且是一种疾病,影响着一个人的生活状况。就患者治疗而言,对贫血类型进行正确的诊断是至关重要的。患者数量和医院优先级的增加,以及获得医学专家的困难,可能使这样的诊断具有挑战性[2]。目前的研究提供了一种在临床环境中检测贫血的技术。我们使用从病理中心获得的CBC(全血细胞计数)数据来检查监督机器学习技术-朴素贝叶斯,LR, LASSO和ES算法用于预测贫血[1]。并假设患者在90天后是否被治愈。与LR、LASSO和ES相比,结果表明,在准确率方面,朴素贝叶斯方法表现更好
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Curability Prediction Model for Anemia Using Machine Learning
Anemia, defined by the WHO as an insufficient red blood cell count is the most common blood illness globally. This illness affects one's condition of life as a disease and as well as a symptom. In terms of patient therapy, it's critical to get a proper diagnosis of the type of anaemia. The rising count in patients and hospital priorities, as well as the difficulty in obtaining medical specialists, could make such a diagnosis challenging[2]. The current study provides a technique for detecting anaemia in clinical settings. We use CBC (complete blood count) data obtained from pathology centres to examine supervised machine learning techniques - Naive Bayes, LR, LASSO, and ES algorithm for prediction of anaemia[1]. And make a assumption of the patients, wheather He/She get Cured or not Cured after 90 Days. In comparison to LR, LASSO AND ES, the results suggest that the NaiveBayes approach outperforms in terms of accuracy
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