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机器学习作为一种精准医疗方法用于开具瑞德西韦或皮质类固醇治疗新冠肺炎的药物处方

Machine Learning as a Precision-Medicine Approach to Prescribing COVID-19 Pharmacotherapy with Remdesivir or Corticosteroids.

作者信息

Lam Carson, Siefkas Anna, Zelin Nicole S, Barnes Gina, Dellinger R Phillip, Vincent Jean-Louis, Braden Gregory, Burdick Hoyt, Hoffman Jana, Calvert Jacob, Mao Qingqing, Das Ritankar

机构信息

Dascena Inc, Houston, Texas.

Dascena Inc, Houston, Texas.

出版信息

Clin Ther. 2021 May;43(5):871-885. doi: 10.1016/j.clinthera.2021.03.016. Epub 2021 Mar 29.

Abstract

PURPOSE

Coronavirus disease-2019 (COVID-19) continues to be a global threat and remains a significant cause of hospitalizations. Recent clinical guidelines have supported the use of corticosteroids or remdesivir in the treatment of COVID-19. However, uncertainty remains about which patients are most likely to benefit from treatment with either drug; such knowledge is crucial for avoiding preventable adverse effects, minimizing costs, and effectively allocating resources. This study presents a machine-learning system with the capacity to identify patients in whom treatment with a corticosteroid or remdesivir is associated with improved survival time.

METHODS

Gradient-boosted decision-tree models used for predicting treatment benefit were trained and tested on data from electronic health records dated between December 18, 2019, and October 18, 2020, from adult patients (age ≥18 years) with COVID-19 in 10 US hospitals. Models were evaluated for performance in identifying patients with longer survival times when treated with a corticosteroid versus remdesivir. Fine and Gray proportional-hazards models were used for identifying significant findings in treated and nontreated patients, in a subset of patients who received supplemental oxygen, and in patients identified by the algorithm. Inverse probability-of-treatment weights were used to adjust for confounding. Models were trained and tested separately for each treatment.

FINDINGS

Data from 2364 patients were included, with men comprising slightly more than 50% of the sample; 893 patients were treated with remdesivir, and 1471 were treated with a corticosteroid. After adjustment for confounding, neither corticosteroids nor remdesivir use was associated with increased survival time in the overall population or in the subpopulation that received supplemental oxygen. However, in the populations identified by the algorithms, both corticosteroids and remdesivir were significantly associated with an increase in survival time, with hazard ratios of 0.56 and 0.40, respectively (both, P = 0.04).

IMPLICATIONS

Machine-learning methods have the capacity to identify hospitalized patients with COVID-19 in whom treatment with a corticosteroid or remdesivir is associated with an increase in survival time. These methods may help to improve patient outcomes and allocate resources during the COVID-19 crisis.

摘要

目的

2019冠状病毒病(COVID-19)仍然是一个全球威胁,并且仍是住院治疗的一个重要原因。最近的临床指南支持使用皮质类固醇或瑞德西韦治疗COVID-19。然而,对于哪些患者最有可能从这两种药物的治疗中获益仍存在不确定性;此类知识对于避免可预防的不良反应、降低成本以及有效分配资源至关重要。本研究提出了一种机器学习系统,该系统能够识别接受皮质类固醇或瑞德西韦治疗后生存时间得以改善的患者。

方法

用于预测治疗获益的梯度提升决策树模型在来自美国10家医院的18岁及以上成年COVID-19患者于2019年12月18日至2020年10月18日期间的电子健康记录数据上进行训练和测试。对模型在识别接受皮质类固醇与瑞德西韦治疗时生存时间更长的患者方面的性能进行评估。使用Fine和Gray比例风险模型来识别接受治疗和未接受治疗的患者、接受补充氧气的患者亚组以及算法识别出的患者中的显著结果。采用治疗逆概率权重来调整混杂因素。针对每种治疗分别对模型进行训练和测试。

结果

纳入了2364例患者的数据,样本中男性略多于50%;893例患者接受了瑞德西韦治疗,1471例患者接受了皮质类固醇治疗。在调整混杂因素后,在总体人群或接受补充氧气的亚组人群中,使用皮质类固醇或瑞德西韦均与生存时间增加无关。然而,在算法识别出的人群中,皮质类固醇和瑞德西韦均与生存时间增加显著相关,风险比分别为0.56和0.40(P均=0.04)。

启示

机器学习方法有能力识别出接受皮质类固醇或瑞德西韦治疗后生存时间增加的COVID-19住院患者。这些方法可能有助于在COVID-19危机期间改善患者预后并分配资源。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2bcb/8006198/4dc8fd31c4f7/gr1_lrg.jpg

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