机器学习和人工智能是有价值的工具,但取决于数据输入。

IF 4.4 1区 医学 Q1 ORTHOPEDICS
Laurie A Hiemstra
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引用次数: 0

摘要

机器学习很可能成为预测髌骨股骨不稳患者预后的最有价值的工具之一。由于风险因素众多,传统的统计分析在这一诊断中具有挑战性。然而,必须考虑三个重要的注意事项:1)机器学习受到输入数据质量的限制。髌骨不稳的许多风险因素都依赖于检查者之间存在显著差异的分类系统,而用于跟踪变化的患者报告结果包含固有偏差,尤其是在种族和性别方面。数据质量差会导致预测结果不可靠。"垃圾进等于垃圾出"。2)解决特定临床问题的最佳机器学习算法仍不确定;3)我们究竟需要多少数据才能进行准确分析的问题仍未解决。这同样完全取决于数据的质量。机器学习是未来的趋势,但要小心鸡肉沙拉中的成分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Editorial Commentary: Machine Learning and Artificial Intelligence Are Valuable Tools yet Dependent on the Data Input.

Machine learning is likely to become one of the most valuable tools for predicting outcomes in patients with patellofemoral instability. Traditional statistical analysis is challenging in this diagnosis as the result of the multitude of risk factors. However, 3 important cautions must be considered. (1) Machine learning is limited by the quality of the data entered. Many of the risk factors for patellofemoral instability rely on classification systems with significant interexaminer variability and patient-reported outcomes used to track changes contain inherent biases, especially with regard to race and gender. Poor data quality will lead to unreliable predictions, or "garbage in equals garbage out." (2) The optimal machine-learning algorithms for addressing specific clinical questions remain uncertain. (3) The question of how much data we really need for accurate analysis is unresolved, which again, is completely dependent on the quality of the data. Machine learning is the future; just beware of what goes into the chicken salad.

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来源期刊
CiteScore
9.30
自引率
17.00%
发文量
555
审稿时长
58 days
期刊介绍: Nowhere is minimally invasive surgery explained better than in Arthroscopy, the leading peer-reviewed journal in the field. Every issue enables you to put into perspective the usefulness of the various emerging arthroscopic techniques. The advantages and disadvantages of these methods -- along with their applications in various situations -- are discussed in relation to their efficiency, efficacy and cost benefit. As a special incentive, paid subscribers also receive access to the journal expanded website.
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