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Cost-Effective Machine Learning Based Clinical Pre-Test Probability Strategy for DVT Diagnosis in Neurological Intensive Care Unit

机译:基于经济高效的机器学习临床预测概要概要策略用于神经热敏监护单位的DVT诊断

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摘要

In order to overcome the shortage of the current costly DVT diagnosis and reduce the waste of valuable healthcare resources, we proposed a new diagnostic approach based on machine learning pre-test prediction models using EHRs. We examined the sociodemographic and clinical factors in the prediction of DVT with 518 NICU admitted patients, including 189 patients who eventually developed DVT. We used cross-validation on the training data to determine the optimal parameters, and finally, the applied ROC analysis is adopted to evaluate the predictive strength of each model. Two models (GLM and SVM) with the strongest ROC were selected for DVT prediction, based on which, we optimized the current intervention and diagnostic process of DVT and examined the performance of the proposed approach through simulations. The use of machine learning based pre-test prediction models can simplify and improve the intervention and diagnostic process of patients in NICU with suspected DVT, and reduce the valuable healthcare resource occupation/usage and medical costs.
机译:为了克服当前昂贵的DVT诊断和减少有价值的医疗资源的浪费,我们提出了一种基于机器学习预测预测模型的新诊断方法,使用EHRS。我们研究了DVT预测的社会血统和临床因素,其中518名尼苏患者,其中包括189名最终开发DVT的患者。我们在训练数据上使用了交叉验证来确定最佳参数,最后,采用所施加的ROC分析来评估每个模型的预测强度。选择具有最强ROC的两种型号(GLM和SVM)用于DVT预测,我们优化了DVT的当前干预和诊断过程,并通过模拟检查了所提出的方法的性能。基于机器学习的预测预测模型的使用可以简化和改善NICU患者的干预和诊断过程,怀疑DVT,减少了有价值的医疗资源占用/使用和医疗费用。

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