Chen Huijiao, Han Jin, Li Jing, Xiong Jianhua, Wang Dong, Han Mingming, Shen Yuehao, Lu Wenli
Department of Neurosurgery, Tianjin Medical University General Hospital, Tianjin, China.
Department of Critical Care Medicine, Tianjin Medical University General Hospital, Tianjin, China.
Front Nutr. 2025 Jan 14;11:1522911. doi: 10.3389/fnut.2024.1522911. eCollection 2024.
Although more risk prediction models are available for feeding intolerance in enteral-nourishment patients, it is still unclear how well these models will work in clinical settings. Future research faces challenges in validating model accuracy across populations, enhancing interpretability for clinical use, and overcoming dataset limitations.
To thoroughly examine studies that have been published on feeding intolerance risk prediction models for enteral nutrition patients.
Conducted a systematic review and meta-analysis of observational studies.
A comprehensive search of the literature was conducted using a range of databases, including China National Knowledge Infrastructure (CNKI), Wanfang Database, China Science and Technology Journal Database (VIP), SinoMed, PubMed, Web of Science, The Cochrane Library, Cumulative Index to Nursing and Allied Health Literature (CINAHL) and Embase. The search scope was confined to articles within the database from its inception until August 12th, 2024. The data from the selected studies should be extracted, including study design, subjects, duration of follow-up, data sources, outcome measures, sample size, handling of missing data, continuous variable handling methods, variable selection, final predictors, model development and performance, and form of model presentation. The applicability and bias risk were evaluated using the Prediction Model Risk of Bias Assessment Tool (PROBAST) checklist.
A total of 1,472 studies were retrieved. Following the selection criteria, 18 prediction models sourced from 14 studies were incorporated into this review. In the field of model construction, only one study employed the use of multiple machine-learning techniques for the development of a model. In contrast, the remaining studies used logistic regression to construct FI risk prediction models. The incidence of FI in enteral nutrition was 32.4-63.1%. The top five predictors included in the model were APACHE II, age, albumin levels, intra-abdominal pressure, and mechanical ventilation. The reported AUC, or area under the curve, exhibited a range of values between 0.70 and 0.921. All studies were identified as having a high risk of bias, primarily due to the use of inappropriate data sources and inadequate reporting within the analysis domain.
Although the included studies reported a certain degree of discriminatory power in their predictive models to identify feeding intolerance in patients undergoing enteral nutrition, the PROBAST assessment tool deemed all the included studies to carry a significant risk of bias. Future research should emphasize the development of innovative predictive models. These endeavors should incorporate more extensive and diverse sample sizes, adhere to stringent methodological designs, and undergo rigorous multicenter external validation to ensure robustness and generalizability.
Identifier CRD42024585099, https://www.crd.york.ac.uk/prospero/display_record.php?RecordID=585099.
尽管有更多风险预测模型可用于肠内营养患者的喂养不耐受情况,但这些模型在临床环境中的实际效果仍不明确。未来研究在跨人群验证模型准确性、提高临床应用的可解释性以及克服数据集限制方面面临挑战。
全面审查已发表的关于肠内营养患者喂养不耐受风险预测模型的研究。
对观察性研究进行系统评价和荟萃分析。
使用一系列数据库进行全面的文献检索,包括中国知网(CNKI)、万方数据库、维普中文科技期刊数据库(VIP)、中国生物医学文献数据库(SinoMed)、PubMed、Web of Science、考克兰图书馆、护理学与健康照护领域累积索引数据库(CINAHL)和Embase。检索范围限于各数据库自创建至2024年8月12日的文章。提取所选研究的数据,包括研究设计、研究对象、随访时间、数据来源、结局指标、样本量、缺失数据处理方法、连续变量处理方法、变量选择、最终预测因素、模型开发与性能以及模型呈现形式。使用预测模型偏倚风险评估工具(PROBAST)清单评估适用性和偏倚风险。
共检索到1472项研究。根据选择标准,本综述纳入了来自14项研究的18个预测模型。在模型构建领域,只有一项研究采用多种机器学习技术开发模型。相比之下,其余研究使用逻辑回归构建喂养不耐受风险预测模型。肠内营养中喂养不耐受的发生率为32.4% - 63.1%。模型中纳入的前五个预测因素为急性生理与慢性健康状况评分系统II(APACHE II)、年龄、白蛋白水平、腹内压和机械通气。报告的曲线下面积(AUC)值在0.70至0.921之间。所有研究均被确定存在高偏倚风险,主要原因是使用了不适当的数据来源以及分析领域内报告不充分。
尽管纳入研究报告其预测模型在识别肠内营养患者喂养不耐受方面具有一定的鉴别能力,但PROBAST评估工具认为所有纳入研究均存在显著偏倚风险。未来研究应强调开发创新的预测模型。这些工作应纳入更广泛和多样的样本量,遵循严格的方法学设计,并进行严格的多中心外部验证,以确保稳健性和可推广性。
标识符CRD42024585099,https://www.crd.york.ac.uk/prospero/display_record.php?RecordID=585099