在一般重症监护方案中验证癌症人群衍生的AKI机器学习算法。

IF 2.8 3区 医学 Q2 ONCOLOGY
Lauren Abigail Scanlon, Catherine O'Hara, Matthew Barker-Hewitt, Jorge Barriuso
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引用次数: 0

摘要

目的:急性肾损伤(Acute Kidney Injury, AKI)是一种突发性肾损害。这种损害通常没有任何征兆,可导致死亡率和住院费用的增加,对正在接受癌症治疗的患者尤其重要。在之前的工作中,我们开发了一种机器学习算法,在癌症患者数据的训练下,在事件发生前30天预测AKI。在这里,我们在非癌症数据上验证了这个模型。方法/患者:重症监护医疗信息集市(MIMIC)是一个大型的、免费提供的数据库,其中包含贝斯以色列女执事医疗中心重症监护病房收治的患者的去识别数据。来自28,498名MIMIC患者的数据用于验证我们的算法,总蛋白测量的不可用性是最大的去除标准。结果和结论:将我们的算法应用于MIMIC数据产生每次血液检查的AUROC为0.821 (95% CI 0.820-0.821)。我们的癌症衍生算法与在MIMIC上衍生和/或测试的其他AKI模型比较积极,我们的模型在最长30天的时间框架内预测AKI。这表明,我们的模型可以在患者群体中取得良好的表现,而这些患者群体与其衍生的患者群体截然不同,这表明了在临床环境中实施的可转移性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validation of a cancer population derived AKI machine learning algorithm in a general critical care scenario.

Purpose: Acute Kidney Injury (AKI) is the sudden onset of kidney damage. This damage usually comes without warning and can lead to increased mortality and inpatient costs and is of particular significance to patients undergoing cancer treatment. In previous work, we developed a machine learning algorithm to predict AKI up to 30 days prior to the event, trained on cancer patient data. Here, we validate this model on non-cancer data.

Methods/patients: Medical Information Mart for Intensive Care (MIMIC) is a large, freely available database containing de-identified data from patients who were admitted to the critical care units of the Beth Israel Deaconess Medical Center. Data from 28,498 MIMIC patients were used to validate our algorithm, non-availability of Total Protein measure being the largest removal criterion.

Results and conclusions: Applying our algorithm to MIMIC data generated an AUROC of 0.821 (95% CI 0.820-0.821) per blood test. Our cancer derived algorithm compares positively with other AKI models derived and/or tested on MIMIC, with our model predicting AKI at the longest time frame of up to 30 days. This suggests that our model can achieve a good performance on patient cohorts very different to those from which it was derived, demonstrating the transferability and applicability for implementation in a clinical setting.

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来源期刊
CiteScore
6.20
自引率
2.90%
发文量
240
审稿时长
1 months
期刊介绍: Clinical and Translational Oncology is an international journal devoted to fostering interaction between experimental and clinical oncology. It covers all aspects of research on cancer, from the more basic discoveries dealing with both cell and molecular biology of tumour cells, to the most advanced clinical assays of conventional and new drugs. In addition, the journal has a strong commitment to facilitating the transfer of knowledge from the basic laboratory to the clinical practice, with the publication of educational series devoted to closing the gap between molecular and clinical oncologists. Molecular biology of tumours, identification of new targets for cancer therapy, and new technologies for research and treatment of cancer are the major themes covered by the educational series. Full research articles on a broad spectrum of subjects, including the molecular and cellular bases of disease, aetiology, pathophysiology, pathology, epidemiology, clinical features, and the diagnosis, prognosis and treatment of cancer, will be considered for publication.
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