[Translated article] Use of artificial intelligence to predict complications in degenerative thoracolumbar spine surgery: A systematic review

Q3 Medicine
G. Ricciardi , J.I. Cirillo Totera , R. Pons Belmonte , L. Romero Valverde , F. López Muñoz , A. Manríquez Díaz
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引用次数: 0

Abstract

Objective

We aim to conduct a systematic review of the literature to evaluate the effectiveness of artificial intelligence prediction models in predicting complications in adult patients undergoing surgery for degenerative thoracolumbar pathology compared with other commonly used prediction techniques.

Methods

A systematic literature review was conducted in Medline/Pubmed, Cochrane Library, and Lilacs/Portal de la BVS to identify machine learning models in predicting complications in patients undergoing surgery for degenerative thoracolumbar spine pathology between January 1, 2000, and May 1, 2023. The risk of bias was assessed using the PROBAST tool. Study characteristics and outcomes focusing on general or specific complications were recorded.

Results

A total of 2341 titles were identified (763 were duplicates). Screening was performed on 1578 titles, and 22 were selected for full-text reading, with 18 exclusions and 4 publications selected for the subsequent review. Additionally, 8 publications were included from other sources (Argentine Association of Orthopaedics and Traumatology Library; manual citation search). In 5 (41.6%) articles, the effectiveness of artificial intelligence predictive models was compared with conventional techniques. All were globally classified as having a very high risk of bias. Due to heterogeneity in samples, outcomes of interest, and algorithm evaluation metrics, a meta-analysis was not performed.

Conclusion

Although the available evidence is limited and carries a high risk of bias, the studies analysed suggest that these models may achieve promising performance in predicting complications, with area under the curve values mostly ranging from acceptable to excellent.
使用人工智能预测退行性胸腰椎手术并发症:一项系统综述
目的通过系统的文献综述,评价人工智能预测模型在预测成人退行性胸腰椎病变手术并发症方面的有效性,并与其他常用预测技术进行比较。方法系统回顾Medline/Pubmed、Cochrane Library和Lilacs/Portal de la BVS的文献,确定机器学习模型在预测2000年1月1日至2023年5月1日行退行性胸腰椎病变手术患者并发症中的应用。使用PROBAST工具评估偏倚风险。记录一般或特定并发症的研究特征和结果。结果共检出2341篇文献,其中重复文献763篇。对1578篇文献进行筛选,其中22篇入选全文阅读,18篇被排除,4篇入选后续综述。此外,从其他来源(阿根廷骨科和创伤学协会图书馆;人工引文检索)纳入了8份出版物。在5篇(41.6%)的文章中,人工智能预测模型与传统技术的有效性进行了比较。所有这些都被全球归类为具有非常高的偏倚风险。由于样本、感兴趣的结果和算法评估指标的异质性,没有进行meta分析。结论虽然现有的证据有限且存在较高的偏倚风险,但分析的研究表明,这些模型在预测并发症方面可能取得很好的效果,曲线下面积值大多在可接受到优秀之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
156
审稿时长
51 weeks
期刊介绍: Es una magnífica revista para acceder a los mejores artículos de investigación en la especialidad y los casos clínicos de mayor interés. Además, es la Publicación Oficial de la Sociedad, y está incluida en prestigiosos índices de referencia en medicina.
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