绘制用于预测外科手术输血的机器学习模型图:范围综述。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-10-25 DOI:10.1186/s12911-024-02729-3
Olivier Duranteau, Florian Blanchard, Benjamin Popoff, Faridi S van Etten-Jamaludin, Turgay Tuna, Benedikt Preckel
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引用次数: 0

摘要

大量输注血液制品给确定输血需求和适当的血液制品量带来了挑战。本综述探讨了使用机器学习(ML)模型预测手术过程中的输血风险,重点关注预测输血所采用的方法、变量和软件。本综述调查了用于预测手术过程中输血风险的机器学习模型的发展和现状,旨在让医生了解该领域的进展和潜在方向。该综述使用 Cochrane、Embase 和 PubM 等数据库进行搜索,搜索关键词包括输血、统计模型和外科手术。共有 40 项研究符合纳入标准。最常研究的生物变量包括血红蛋白、血小板计数、国际标准化比值(INR)、活化部分凝血活酶时间(aPTT)、纤维蛋白原、肌酐、白细胞和白蛋白。重要的临床变量包括年龄、性别、手术类型、血压、体重、手术持续时间、美国麻醉学会(ASA)状态、失血量和体重指数(BMI)。所使用的软件各不相同,其中最常用的是 Python、R、SPSS 和 SAS。我们的范围界定综述强调了在方法、变量和所用软件方面改进报告和提高透明度的必要性。未来的研究应侧重于提供详细描述和开放各自模型的代码,提高可重复性,并增强输血风险预测模型的临床相关性。
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Mapping the landscape of machine learning models used for predicting transfusions in surgical procedures: a scoping review.

Massive transfusion of blood products poses challenges in determining the need for transfusion and the appropriate volume of blood products. This review explores the use of machine learning (ML) models to predict transfusion risk during surgical procedure, focusing on the methodology, variables, and software employed to predict transfusion. This scoping review investigates the development and current state of machine learning models for predicting transfusion risk during surgical procedure, aiming to inform physicians about the field's progress and potential directions.The review was conducted using the databases Cochrane, Embase, and PubMed. The search included keywords related to blood transfusion, statistical models, and surgical procedures. Peer-reviewed articles were included, while literature reviews, case reports, and non-human studies were excluded.A total of 40 studies met the inclusion criteria. The most frequently studied biological variables included haemoglobin, platelet count, international normalized ratio (INR), activated partial thromboplastin time (aPTT), fibrinogen, creatinine, white blood cells, and albumin. Clinical variables of importance included age, sex, surgery type, blood pressure, weight, surgery duration, american society of anesthesiology (ASA) status, blood loss, and body mass index (BMI). The software employed varied, with Python, R, SPSS, and SAS being the most commonly used. Logistic regression was the predominant methodology used in 20 studies.Our scoping review highlights the need for improved reporting and transparency in methodology, variables, and software used. Future research should focus on providing detailed descriptions and open access to codes of respective models, promoting reproducibility, and enhancing the clinical relevance of transfusion risk prediction models.

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CiteScore
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4.30%
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567
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