使用机器学习预测脊柱登记的随访反应。

IF 3.7 2区 医学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Alice Baroncini, Andrea Campagner, Federico Cabitza, Francesco Langella, Francesca Barile, Pablo Bellosta-López, Domenico Compagnone, Riccardo Cecchinato, Marco Damilano, Andrea Redaelli, Daniele Vanni, Pedro Berjano
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引用次数: 0

摘要

背景:维持登记的主要挑战之一是保持高随访率,目前缺乏可靠的策略来限制辍学。本研究的目的是利用机器学习(ML)模型来突出最有可能退出的患者的特征,并根据获得的数据评估实施随访系统的潜在成本效益。方法:纳入所有在当地脊柱外科登记处招募的患者,收集人口统计学、围手术期和术后数据。对5个ML模型进行训练并评估其对随访预测的响应。然后实施可解释和谨慎的人工智能,以增加模型的可信度。将当前随访策略(呼叫所有人)的疗效和成本效益与基于实施模型的策略(仅呼叫具有高退学风险的患者)进行比较。结果:共有4652例患者记录。随机森林(RF)在预测随访反应方面优于所有模型。在考虑的变量中,权重最大的是随访时间、主要病理程度和手术程度、SF-36和BMI。可解释决策树(IDT)和选择性预测模型进一步提高了模型的性能。成本降低计算预测,随着时间的推移,在临床实践中实施开发的ML模型将使成本降低31%,未接来电率仅为2‰。结论:ML模型能有效识别辍学高危患者。RF模型优于所有评估模型,并通过使用可控AI进一步改进。将机器学习应用于后续策略可以降低成本并限制错过的响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of machine learning for the prediction of response to follow-up in spine registries.

Background: One of the main challenges in the maintenance of registries is to keep a high follow-up rate and a reliable strategy to limit dropout is currently lacking. Aim of this study was to utilize machine learning (ML) models to highlight the characteristics of patients who are most likely to drop out, and to evaluate the potential cost effectiveness of the implementation of a follow-up system based on the obtained data.

Methods: All patients recruited in the local spine surgery registry were included and demographic, peri- and postoperative data were collected. Five ML models were trained and evaluated for response to follow-up prediction. Explainable and Cautious AI were then implemented to increase the trustworthiness of the model. The efficacy and cost effectiveness of the current follow-up strategy (call everybody) were compared to a strategy based on the implemented model (call only patients with high dropout risk).

Results: Records from 4652 patients were available. The random forest (RF) outperformed all models in the prediction of response to follow-up. Among the considered variables, the ones that had the most weight were length of follow up, level of the main pathology and extent of surgery, SF-36 and BMI. Interpretable Decision Trees (IDT) and selective prediction models further increased the performance of the model. The cost reduction calculation predicted that implementing the developed ML model in the clinical practice would, over time, result in a reduction of costs by 31%, with only 2‰ missed calls.

Conclusion: ML models can effectively identify patients with high risk of dropout. The RF model outperformed all evaluated models, and was further improved with the use of Controllable AI. The application of ML to the follow-up strategy could reduce costs and limit missed responses.

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来源期刊
International Journal of Medical Informatics
International Journal of Medical Informatics 医学-计算机:信息系统
CiteScore
8.90
自引率
4.10%
发文量
217
审稿时长
42 days
期刊介绍: International Journal of Medical Informatics provides an international medium for dissemination of original results and interpretative reviews concerning the field of medical informatics. The Journal emphasizes the evaluation of systems in healthcare settings. The scope of journal covers: Information systems, including national or international registration systems, hospital information systems, departmental and/or physician''s office systems, document handling systems, electronic medical record systems, standardization, systems integration etc.; Computer-aided medical decision support systems using heuristic, algorithmic and/or statistical methods as exemplified in decision theory, protocol development, artificial intelligence, etc. Educational computer based programs pertaining to medical informatics or medicine in general; Organizational, economic, social, clinical impact, ethical and cost-benefit aspects of IT applications in health care.
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