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A systematic review on machine learning in sellar region diseases: quality and reporting items

机译:对鞍区疾病机器学习的系统评价:质量和报告项目

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Introduction Machine learning methods in sellar region diseases present a particular challenge because of the complexity and the necessity for reproducibility. This systematic review aims to compile the current literature on sellar region diseases that utilized machine learning methods and to propose a quality assessment tool and reporting checklist for future studies. Methods PubMed and Web of Science were searched to identify relevant studies. The quality assessment included five categories: unmet needs, reproducibility, robustness, generalizability and clinical significance. Results Seventeen studies were included with the diagnosis of general pituitary neoplasms, acromegaly, Cushing’s disease, craniopharyngioma and growth hormone deficiency. 87.5% of the studies arbitrarily chose one or two machine learning models. One study chose ensemble models, and one study compared several models. 43.8% of studies did not provide the platform for model training, and roughly half did not offer parameters or hyperparameters. 62.5% of the studies provided a valid method to avoid over-fitting, but only five reported variations in the validation statistics. Only one study validated the algorithm in a different external database. Four studies reported how to interpret the predictors, and most studies (68.8%) suggested possible clinical applications of the developed algorithm. The workflow of a machine-learning study and the recommended reporting items were also provided based on the results. Conclusions Machine learning methods were used to predict diagnosis and posttreatment outcomes in sellar region diseases. Though most studies had substantial unmet need and proposed possible clinical application, replicability, robustness and generalizability were major limits in current studies.
机译:简介由于复杂性和可重复性的必要性,在蝶鞍区疾病中的机器学习方法提出了一个特殊的挑战。本系统综述旨在汇编利用机器学习方法的有关蝶鞍区疾病的最新文献,并提出用于未来研究的质量评估工具和报告清单。方法检索PubMed和Web of Science以确定相关研究。质量评估包括五类:未满足的需求,可重复性,健壮性,可概括性和临床意义。结果共纳入17项研究,以诊断垂体瘤,肢端肥大症,库欣病,颅咽管瘤和生长激素缺乏症。 87.5%的研究任意选择一种或两种机器学习模型。一项研究选择了集成模型,而一项研究则比较了几种模型。 43.8%的研究未提供模型训练的平台,大约一半的研究未提供参数或超参数。 62.5%的研究提供了避免过度拟合的有效方法,但只有五次报告了验证统计数据的变化。只有一项研究在不同的外部数据库中验证了该算法。有四项研究报告了如何解释预测因子,大多数研究(68.8%)建议开发的算法可能在临床上应用。根据结果​​还提供了机器学习研究的工作流程和推荐的报告项目。结论机器学习方法被用来预测鞍区疾病的诊断和后处理结果。尽管大多数研究有大量未满足的需求并提出了可能的临床应用,但可复制性,鲁棒性和通用性是当前研究的主要限制。

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