用Kolmogorov-Gabor多项式预测COVID-19住院时间:描绘护理的未来

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Information (Switzerland) Pub Date : 2023-10-31 DOI:10.3390/info14110590
Hamidreza Marateb, Mina Norouzirad, Kouhyar Tavakolian, Faezeh Aminorroaya, Mohammadreza Mohebbian, Miguel Ángel Mañanas, Sergio Romero Lafuente, Ramin Sami, Marjan Mansourian
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引用次数: 0

摘要

考虑到COVID-19的呼吸性质,优化病床配置至关重要,因为某些患者需要紧急住院。一些国家的政府已经利用技术来减轻大流行的不利影响。基于入院时评估的临床和人口统计学变量,本研究预测了COVID-19患者在医院的住院时间(LOS)。使用正则化最小二乘法训练Kolmogorov-Gabor多项式(又称Volterra函数序列),并在伊朗中部省份Khorshid医院入院的1600名COVID-19患者数据集上进行验证,并给出了五倍内部交叉验证结果。Volterra方法提供了灵活性、变量之间的相互作用和鲁棒性。LOS预测系统最重要的特征是炎症标志物、碳酸氢盐(HCO3)和发烧。R2和一致性相关系数分别为0.81 [95% CI: 0.79-0.84]和0.94[0.93-0.95]。估计偏差无统计学意义(p值= 0.777;paired-sample t检验)。进一步分析该系统以预测“正常”LOS≤7天与“延长”LOS >7天组。它显示了良好的平衡诊断准确性和符合率。然而,时间和空间验证必须考虑推广模型。这一贡献有望为医院和医疗保健提供者更好地管理其资源铺平道路。
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Predicting COVID-19 Hospital Stays with Kolmogorov–Gabor Polynomials: Charting the Future of Care
Optimal allocation of ward beds is crucial given the respiratory nature of COVID-19, which necessitates urgent hospitalization for certain patients. Several governments have leveraged technology to mitigate the pandemic’s adverse impacts. Based on clinical and demographic variables assessed upon admission, this study predicts the length of stay (LOS) for COVID-19 patients in hospitals. The Kolmogorov–Gabor polynomial (a.k.a., Volterra functional series) was trained using regularized least squares and validated on a dataset of 1600 COVID-19 patients admitted to Khorshid Hospital in the central province of Iran, and the five-fold internal cross-validated results were presented. The Volterra method provides flexibility, interactions among variables, and robustness. The most important features of the LOS prediction system were inflammatory markers, bicarbonate (HCO3), and fever—the adj. R2 and Concordance Correlation Coefficients were 0.81 [95% CI: 0.79–0.84] and 0.94 [0.93–0.95], respectively. The estimation bias was not statistically significant (p-value = 0.777; paired-sample t-test). The system was further analyzed to predict “normal” LOS ≤ 7 days versus “prolonged” LOS > 7 days groups. It showed excellent balanced diagnostic accuracy and agreement rate. However, temporal and spatial validation must be considered to generalize the model. This contribution is hoped to pave the way for hospitals and healthcare providers to manage their resources better.
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来源期刊
Information (Switzerland)
Information (Switzerland) Computer Science-Information Systems
CiteScore
6.90
自引率
0.00%
发文量
515
审稿时长
11 weeks
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