机器学习在预测门诊脊柱手术候选人中的应用:综述。

Q1 Medicine
Journal of spine surgery Pub Date : 2023-09-22 Epub Date: 2023-07-06 DOI:10.21037/jss-22-121
Ian J Wellington, Owen P Karsmarski, Kyle V Murphy, Matthew E Shuman, Mitchell K Ng, Christopher L Antonacci
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引用次数: 0

摘要

虽然脊柱手术历来是在住院环境中进行的,但近年来,人们对在门诊基础上进行某些颈椎和腰椎手术越来越感兴趣。虽然在门诊环境中进行这些手术对外科医生和患者来说都是可取的,但适当的患者选择至关重要。近年来,脊柱外科文献中越来越多地使用机器学习技术进行数据分析和结果预测。机器学习是一种统计形式,通常应用于大型数据集,创建预测模型,只需很少或根本不需要人工干预,即可应用于以前看不见的数据。在分析复杂数据集时,机器学习技术在预测准确性方面可能优于传统的逻辑回归。研究人员已将机器学习应用于开发算法,以帮助选择脊柱手术的患者并预测术后结果。此外,人们对使用机器学习来帮助选择可能适合门诊颈椎和腰椎手术的患者越来越感兴趣。这篇综述的目的是讨论当前利用机器学习来预测合适的颈椎和腰椎手术患者、门诊脊柱手术的候选者以及这些手术后的结果的文献。
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 predicting candidates for outpatient spine surgery: a review.

While spine surgery has historically been performed in the inpatient setting, in recent years there has been growing interest in performing certain cervical and lumbar spine procedures on an outpatient basis. While conducting these procedures in the outpatient setting may be preferable for both the surgeon and the patient, appropriate patient selection is crucial. The employment of machine learning techniques for data analysis and outcome prediction has grown in recent years within spine surgery literature. Machine learning is a form of statistics often applied to large datasets that creates predictive models, with minimal to no human intervention, that can be applied to previously unseen data. Machine learning techniques may outperform traditional logistic regression with regards to predictive accuracy when analyzing complex datasets. Researchers have applied machine learning to develop algorithms to aid in patient selection for spinal surgery and to predict postoperative outcomes. Furthermore, there has been increasing interest in using machine learning to assist in the selection of patients who may be appropriate candidates for outpatient cervical and lumbar spine surgery. The goal of this review is to discuss the current literature utilizing machine learning to predict appropriate patients for cervical and lumbar spine surgery, candidates for outpatient spine surgery, and outcomes following these procedures.

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来源期刊
Journal of spine surgery
Journal of spine surgery Medicine-Surgery
CiteScore
5.60
自引率
0.00%
发文量
24
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