An Adaptable SVM Model for Abnormalities Detection in Chest X-ray Reports

A. Ìyàndá, Omolara Aminat Ogungbe, A. Aderibigbe
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引用次数: 0

Abstract

In Nigeria, prose format is used to present and perform analysis on chest x-ray reports and this often results in delayed response from the clinicians. Therefore, with a view to developing a system for analyzing chest x-ray reports for diagnosing cardiomegaly, linear support vector machine algorithm was utilized to formulate an adaptable model with a train-test split of 70:30 for six hundred and fifty (650) de-identified patients' information. Attributes relevant to cardiomegaly from the collected dataset were extracted using Term frequency/inverse document frequency technique. This work provides an adequate requirement for diagnosis design with accuracy of 93.69%. Its implementation in software application has the potential to reduce delay in attending to patients and can also help the clinicians focus on the findings from chest x-ray reports.
胸部x线报告异常检测的自适应SVM模型
在尼日利亚,使用散文格式来呈现和执行胸部x光报告分析,这通常导致临床医生的反应延迟。因此,为了开发用于诊断心脏肥大的胸部x线报告分析系统,我们利用线性支持向量机算法,针对650例去识别患者的信息,建立了一个训练测试分割为70:30的自适应模型。使用术语频率/逆文档频率技术从收集的数据集中提取与心脏肥大相关的属性。这项工作为诊断设计提供了足够的要求,准确率为93.69%。它在软件应用中的实现有可能减少对患者的延误,也可以帮助临床医生专注于胸部x光报告的发现。
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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