基于递归特征消除的多项逻辑回归分类器自动尸检分类

Zainab Mohanad Issa Ansaf, Dr.Shaheda Akthar
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引用次数: 0

摘要

口头解剖是最好的医学过程之一,可以在医学优势实体证明之前自动识别死亡原因。确定确切的原因是复杂而模糊的。具有确切死因的数据集是每个国家向人民提供有关生活方式和医疗设施的预测的重要工具。在我们的研究中使用多项逻辑回归来降级确切的死亡原因。我们使用PHMRC和Matlab等在医学领域可能被接受的标准数据集。使用多项逻辑回归的原因是大多数数据集由0和1值组成,这些值表示属性中值的存在和不存在。我们使用三个标准指标,如敏感性、机会校正一致性(CCC)和原因特异性死亡率分数(CSMF),将我们的模型与Insilico VA、Tariff和InterVA-4等先前的模型进行比较。计算结果表明,本文提出的模型优于已有的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Verbal Autopsy Classification Using Multinomial Logistic Regression Classifier by Using Recursive Feature Elimination
Verbal autopsy is one of the finest medical process to identify automatically the cause of a death afore medical ascendant entities will certify it. Identifying the exact cause is intricate and fuzzy in nature. The dataset with an exact cause of death is a paramount implement for every country to make the presage about the life style and medical facilities available to the people. Multinomial logistic regression was utilized in our study to relegate the exact cause of death. We used standard datasets like PHMRC and Matlab which were potentially accepted in medical field. The reason to utilize the Multinomial logistic Regression is that most of the dataset is consisting of 0 and 1 values which betoken the presence and absence of value in the attribute. We used three standard metrics like the sensitivity, Chance Corrected Concordance (CCC) and Cause-specific mortality fraction (CSMF) for a comparison of our model with precedent models like Insilico VA, Tariff and InterVA-4. Computed results show that proposed model is better than the precedent models.
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