应用多层感知器神经网络预测呼吸系统肿瘤重症监护患者的预后。

IF 1.1 Q2 MEDICINE, GENERAL & INTERNAL
Einstein-Sao Paulo Pub Date : 2023-09-08 eCollection Date: 2023-01-01 DOI:10.31744/einstein_journal/2023AO0071
Beatriz Nistal-Nuño
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引用次数: 0

摘要

目的:重症监护病房肿瘤患者死亡率的变化可能意味着癌症患者的临床特征和预后在特定亚群之间有很大差异。癌症患者的具体特征尚未被纳入已建立的疾病严重程度评分系统和合并症评分中的风险因素,这表明预测死亡风险的局限性。这项研究旨在使用人工神经网络设计一种预测重症监护室呼吸系统肿瘤成年患者住院死亡率的工具。方法:对贝斯以色列女执事医疗中心的1221名重症监护病房住院患者进行研究。主要终点是全因住院死亡率预测。开发了一种人工神经网络,并将其与六种疾病严重程度评分和一种共病评分进行了比较。模型建立基于癌症死亡率的重要预测因素,如几个实验室参数、人口统计学参数、支持器官的治疗和其他临床信息。对辨别和校准进行了评估。结果:多层感知器的AUROC为0.885,而结论:多层感知器具有良好的辨别能力,这可能是评估癌症危重患者的有价值的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Outcome prediction for critical care patients with respiratory neoplasms using a multilayer perceptron neural network.

Outcome prediction for critical care patients with respiratory neoplasms using a multilayer perceptron neural network.

Outcome prediction for critical care patients with respiratory neoplasms using a multilayer perceptron neural network.

Outcome prediction for critical care patients with respiratory neoplasms using a multilayer perceptron neural network.

Objective: The variation in mortality rates of intensive care unit oncological patients may imply that clinical characteristics and prognoses are very different between specific subsets of patients with cancer. The specific characteristics of patients with cancer have not been included as risk factors in the established severity-of-illness scoring systems and comorbidity scores, showing limitations in predicting mortality risk. This study aimed to devise a predictive tool for in-hospital mortality for adult patients with a respiratory neoplasm admitted to the intensive care unit, using an artificial neural network.

Methods: A total of 1,221 stays in the intensive care unit from the Beth Israel Deaconess Medical Center were studied. The primary endpoint was the all-cause in-hospital mortality prediction. An artificial neural network was developed and compared with six severity-of-illness scores and one comorbidity score. Model building was based on important predictors of lung cancer mortality, such as several laboratory parameters, demographic parameters, organ-supporting treatments, and other clinical information. Discrimination and calibration were assessed.

Results: The AUROC for the multilayer perceptron was 0.885, while it was <0.74 for the conventional systems. The AUPRC for the multilayer perceptron was 0.731, whereas it was ≤0.482 for the conventional systems. The superiority of multilayer perceptron was statistically significant for all pairwise AUROC and AUPRC comparisons. The Brier Score was better for the multilayer perceptron (0.109) than for OASIS (0.148), SAPS III (0.163), and SAPS II (0.154).

Conclusion: Discrimination was excellent for multilayer perceptron, which may be a valuable tool for assessing critically ill patients with lung cancer.

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Einstein-Sao Paulo
Einstein-Sao Paulo MEDICINE, GENERAL & INTERNAL-
CiteScore
2.00
自引率
0.00%
发文量
210
审稿时长
38 weeks
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