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Using operative features to identify surgical complexity: a case in breast surgery practice

机译:利用手术特征识别手术的复杂性:乳房手术实践中的一个案例

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Increasing workload is one of the main problems that surgical practices face. This increase is not only due to the increasing demand volume but also due to increasing case complexity. This raises the question on how to measure and predict the complexity to address this issue. Predicting surgical duration is critical to parametrize surgical complexity, improve surgeon satisfaction by avoiding unexpected overtime, and improve operation room utilization. Our objective is to utilize the historical data on surgical operations to obtain complexity groups and use this groups to improve practice.Our study first leverages expert opinion on the surgical complexity to identify surgical groups. Then, we use a tree-based method on a large retrospective dataset to identify similar complexity groups by utilizing the surgical features and using surgical duration as a response variable. After obtaining the surgical groups by using two methods, we statistically compare expert-based grouping with the data-based grouping. This comparison shows that a tree-based method can provide complexity groups similar to the ones generated by an expert by using features that are available at the time of surgical listing. These results suggest that one can take advantage of available data to provide surgical duration predictions that are data-driven, evidence-based, and practically relevant.
机译:工作量的增加是外科手术面临的主要问题之一。这种增加不仅是由于需求量的增加,而且还因为案件复杂性的增加。这就提出了一个问题,即如何衡量和预测解决该问题的复杂性。预测手术时间对于参数化手术复杂性,通过避免意外的加班来提高外科医生的满意度以及提高手术室利用率至关重要。我们的目标是利用手术操作的历史数据来获得复杂性分组,并利用这些分组来改善实践。我们的研究首先利用专家对手术复杂性的观点来识别手术组。然后,我们在大型回顾性数据集上使用基于树的方法,以通过利用手术特征并将手术持续时间作为响应变量来识别相似的复杂性组。通过使用两种方法获得手术组后,我们在统计学上将基于专家的分组与基于数据的分组进行比较。这种比较表明,基于树的方法可以通过使用手术挂牌时可用的功能来提供类似于专家生成的复杂度组。这些结果表明,人们可以利用现有数据来提供数据驱动的,基于证据的和实际相关的手术持续时间预测。

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