Prediction of remaining surgery duration based on machine learning methods and laparoscopic annotation data.

Biomedizinische Technik. Biomedical engineering Pub Date : 2025-03-24 Print Date: 2025-06-26 DOI:10.1515/bmt-2024-0431
Spiros Kostopoulos, Dionisis Cavouras, Dimitris Glotsos, Constantinos Loukas
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Abstract

Objectives: The operating room is a fast-paced and demanding environment. Among the various factors involved in its optimization, predicting surgery duration is critical for scheduling and resource organization, ultimately resulting in improved quality of surgical care.

Methods: We design, implement and evaluate a semi-automated machine learning method that takes as input the current phase and tools employed and provides prediction of the Remain Surgery Duration (RSD) in laparoscopic cholecystectomy operations. We use the annotated information of tools and phases provided in the publicly available dataset Cholec80. The method is based on a Random Forest regression model that considers two data streams: the surgical phase and the type of tools employed, at each time-frame of the operation. The data were split into Training-, Validation- and Test-sets. The Mean Absolute Error (MAE) was used as the performance metric for the various models examined.

Results: Our approach managed to achieve a MAE=5.89 min across the overall duration of the surgeries in the test-set and MAE=4.61 min at 20 min before the end of the operation.

Conclusions: The employment of two separate regression models switched at a specific elapsed time threshold provides significant improvement in RSD prediction compared to other methods that process the video from the endoscope.

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基于机器学习方法和腹腔镜注释数据的剩余手术时间预测。
目的:手术室是一个快节奏、高要求的环境。在其优化所涉及的诸多因素中,预测手术时间对于计划和资源组织至关重要,最终导致手术护理质量的提高。方法:我们设计、实现并评估了一种半自动机器学习方法,该方法将当前阶段和使用的工具作为输入,并提供腹腔镜胆囊切除术中剩余手术时间(RSD)的预测。我们使用公开数据集Cholec80中提供的工具和阶段的注释信息。该方法基于随机森林回归模型,该模型考虑了两个数据流:手术阶段和使用的工具类型,在手术的每个时间框架。数据被分成训练集、验证集和测试集。使用平均绝对误差(MAE)作为所检查的各种模型的性能度量。结果:我们的方法在整个手术过程中达到了MAE=5.89 min,在手术结束前20 min达到了MAE=4.61 min。结论:与处理内窥镜视频的其他方法相比,在特定经过时间阈值下切换的两个独立回归模型的使用显著改善了RSD预测。
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