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首页> 外文期刊>Arthroscopy: the journal of arthroscopic & related surgery : official publication of the Arthroscopy Association of North America and the International Arthroscopy Association >Editorial Commentary: Predicting Satisfaction After Hip Arthroscopy Using Machine Learning: What Do Treadmills and Black Boxes Have to Do With Arthroscopy?
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Editorial Commentary: Predicting Satisfaction After Hip Arthroscopy Using Machine Learning: What Do Treadmills and Black Boxes Have to Do With Arthroscopy?

机译:编辑注:预测满意后臀部关节镜使用机器学习:跑步机和黑盒需要做什么关节镜吗?

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摘要

The use of advanced statistical methods and artificial intelligence including machine learning enables researchers to identify preoperative characteristics predictive of patients achieving minimal clinically important differences in health outcomes after interventions including surgery. Machine learning uses algorithms to recognize patterns in data sets to predict outcomes. The advantages are the ability, using ?big data? registries, to infer relations that otherwise would not be readily understood and the ability to continuously improve the model as new data are added. However, machine learning has limitations. Models are only as good as the data incorporated, and data may be misapplied owing to huge data sets and strong computing capabilities, in which spurious correlations may be suggested based on significant P values. Hence, common sense must be applied. The future of outcome prediction studies will most definitely rely on machine learning and artificial intelligence methods.
机译:使用先进的统计方法和人工智能包括机器学习能使研究人员识别术前预测的特点病人实现最小临床重要在健康结果的差异干预措施包括手术。使用算法来识别数据中的模式集预测结果。能力,使用大数据?关系,否则不会容易理解和不断的能力随着新数据的添加改善模型。机器学习有一定的局限性。一样的数据整合和数据误用由于巨大的数据集和强大计算能力,假相关性可能建议的基础上重要的P值。应用。绝对依赖于机器学习和吗人工智能方法。

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