A Healthcare management using clinical decision support system

Likewin Thomas, M. V. Manoj kumar, Annappa
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Abstract

From the literature it is studied that, most of the medical error is due to faulty healthcare system. Due to this, there is treatment delay, that leads to complications in later stages of disease progression. Medical error caused due to the failure in healthcare system can be reduced by employing an appropriate clinical decision support system (CDSS). CDSS helps in identifying the severity of disease by predicting its progression. The treatment management of gallstone disease is considered as a case study in this paper.This paper presents a CDSS with the help of machine learning for improving the treatment management. CDSS with the help of a statistical comparator, identifies an efficient tool for finding the associated risk factors. These risk factors are then used to predict the disease progression and identify the cases that may need Endoscopic Retrograde Cholangio-Pancreatography (ERCP) as the treatment progresses. The model that learns and predicts accurately is selected, using the concept of Area Under Curve (AUC). For this purpose, a Modified Cascade Neural Network (ModCNN) built upon the architecture of Cascade-Correlation Neural Network (CCNN) is proposed and tested using an ADAptive LInear NEuron (ADALINE) circuit. It’s performance is evaluated and compared with Artificial Neural Network (ANN) and CCNN.Using this prediction information, disease progression is analysed and proper treatment is initiated, thereby reducing the medical error. ModCNN showed better accuracy (96.42%) for predicting the disease progression when compared with CCNN (93.24%) and ANN (89.65%). Thus, CDSS presented here, assisted in reducing the medical error and providing better healthcare management.
使用临床决策支持系统的医疗保健管理
从文献研究来看,大多数医疗事故是由于医疗保健系统的缺陷造成的。因此,存在治疗延误,导致疾病进展后期出现并发症。采用适当的临床决策支持系统(CDSS)可以减少因医疗系统故障而导致的医疗差错。CDSS通过预测疾病的进展来帮助确定疾病的严重程度。本文以胆结石疾病的治疗管理为例进行研究。本文提出了一种基于机器学习的疾病诊断支持系统,以提高治疗管理水平。CDSS在统计比较器的帮助下,确定了查找相关风险因素的有效工具。然后使用这些危险因素来预测疾病进展,并确定随着治疗进展可能需要内窥镜逆行胆管胰脏造影(ERCP)的病例。使用曲线下面积(Area Under Curve, AUC)的概念,选择学习和预测准确的模型。为此,提出了一种基于级联相关神经网络(CCNN)结构的改进级联神经网络(ModCNN),并使用自适应线性神经元(ADALINE)电路进行了测试。并与人工神经网络(ANN)和CCNN进行了性能评价和比较。利用这些预测信息,分析疾病进展并开始适当的治疗,从而减少医疗错误。与CCNN(93.24%)和ANN(89.65%)相比,ModCNN预测疾病进展的准确率(96.42%)更高。因此,本文介绍的CDSS有助于减少医疗错误并提供更好的医疗保健管理。
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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