Razo Martha, Pishgar Maryam, Galanter William, Darabi Houshang
Department of Mechanical and Industrial Engineering, University of Illinois Chicago, 942 W Taylor St., Chicago, IL 60607, USA.
Daniel J. Epstein Department of Industrial and Systems Engineering, USC Viterbi School of Engineering, Andrus Gerontology Center, 3715 McClintock Ave, GER 240, Los Angeles, CA 90089, USA.
Bioengineering (Basel). 2024 Nov 30;11(12):1214. doi: 10.3390/bioengineering11121214.
Paralytic Ileus (PI) patients in the Intensive Care Unit (ICU) face a significant risk of death. Current predictive models for PI are often complex and rely on many variables, resulting in unreliable outcomes for such a serious health condition. Predicting mortality in ICU patients with PI is particularly challenging due to the vast amount of data and numerous features involved. To address this issue, a deep-learning predictive framework was developed using the Medical Information Mart for Intensive Care IV (MIMIC-IV) dataset, which includes data from 1017 ICU patients with PI. By employing SHAP (SHapley Additive exPlanations) analysis, we were able to narrow down the features to six distinct clinical lab items. The proposed framework, called DLMP (Deep Learning Model for Mortality Prediction of ICU Patients with PI), utilizes these six unique clinical lab items: Anion gap, Platelet, PTT, BUN, Total Bilirubin, and Bicarbonate, along with one demographic variable as inputs to a neural network consisting of only two neuron layers. DLMP achieved an outstanding prediction performance with an AUC score of 0.887, outperforming existing predictive models for ICU patients with PI. The DLMP framework significantly enhances the prediction of mortality for PI patients compared to traditional process mining and machine learning models. This model holds considerable potential for prognosis, enabling families to be better informed about the severity of a patient's condition and to prepare accordingly. Furthermore, the model is valuable for research purposes and clinical trials.
重症监护病房(ICU)中的麻痹性肠梗阻(PI)患者面临着很高的死亡风险。目前用于PI的预测模型通常很复杂,且依赖于许多变量,对于这样严重的健康状况,其结果并不可靠。由于涉及大量数据和众多特征,预测ICU中PI患者的死亡率尤其具有挑战性。为了解决这个问题,使用重症监护医学信息集市IV(MIMIC-IV)数据集开发了一个深度学习预测框架,该数据集包含1017例ICU中PI患者的数据。通过采用SHAP(Shapley值加法解释)分析,我们能够将特征缩小到六个不同的临床实验室指标。所提出的框架称为DLMP(ICU中PI患者死亡率预测深度学习模型),利用这六个独特的临床实验室指标:阴离子间隙、血小板、活化部分凝血活酶时间、血尿素氮、总胆红素和碳酸氢盐,以及一个人口统计学变量作为仅由两个神经元层组成的神经网络的输入。DLMP取得了出色的预测性能,AUC得分为0.887,优于现有的ICU中PI患者预测模型。与传统的过程挖掘和机器学习模型相比,DLMP框架显著提高了PI患者死亡率的预测。该模型在预后方面具有很大潜力,能使家属更好地了解患者病情的严重程度并做好相应准备。此外,该模型对研究目的和临床试验也很有价值。