Automated surgical skill assessment in endoscopic pituitary surgery using real-time instrument tracking on a high-fidelity bench-top phantom

IF 2.8 Q3 ENGINEERING, BIOMEDICAL
Adrito Das, Bilal Sidiqi, Laurent Mennillo, Zhehua Mao, Mikael Brudfors, Miguel Xochicale, Danyal Z. Khan, Nicola Newall, John G. Hanrahan, Matthew J. Clarkson, Danail Stoyanov, Hani J. Marcus, Sophia Bano
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Abstract

Improved surgical skill is generally associated with improved patient outcomes, although assessment is subjective, labour intensive, and requires domain-specific expertise. Automated data-driven metrics can alleviate these difficulties, as demonstrated by existing machine learning instrument tracking models. However, these models are tested on limited datasets of laparoscopic surgery, with a focus on isolated tasks and robotic surgery. Here, a new public dataset is introduced: the nasal phase of simulated endoscopic pituitary surgery. Simulated surgery allows for a realistic yet repeatable environment, meaning the insights gained from automated assessment can be used by novice surgeons to hone their skills on the simulator before moving to real surgery. Pituitary Real-time INstrument Tracking Network (PRINTNet) has been created as a baseline model for this automated assessment. Consisting of DeepLabV3 for classification and segmentation, StrongSORT for tracking, and the NVIDIA Holoscan for real-time performance, PRINTNet achieved 71.9% multiple object tracking precision running at 22 frames per second. Using this tracking output, a multilayer perceptron achieved 87% accuracy in predicting surgical skill level (novice or expert), with the ‘ratio of total procedure time to instrument visible time’ correlated with higher surgical skill. The new publicly available dataset can be found at https://doi.org/10.5522/04/26511049.

Abstract Image

基于高保真台式假体的实时仪器跟踪在垂体内窥镜手术中的自动手术技能评估。
手术技术的提高通常与患者预后的改善有关,尽管评估是主观的,劳动密集型的,并且需要特定领域的专业知识。正如现有机器学习仪器跟踪模型所证明的那样,自动化数据驱动的度量可以缓解这些困难。然而,这些模型在有限的腹腔镜手术数据集上进行了测试,重点是孤立任务和机器人手术。本文介绍了一个新的公共数据集:模拟鼻内镜垂体手术的鼻相。模拟手术提供了一个真实但可重复的环境,这意味着从自动评估中获得的见解可以被新手外科医生在进行真正的手术之前使用模拟器来磨练他们的技能。垂体实时仪器跟踪网络(PRINTNet)已被创建为自动化评估的基线模型。PRINTNet由用于分类和分割的DeepLabV3、用于跟踪的StrongSORT和用于实时性能的NVIDIA Holoscan组成,以每秒22帧的速度运行,实现了71.9%的多目标跟踪精度。使用这种跟踪输出,多层感知器在预测手术技能水平(新手或专家)方面达到了87%的准确率,“总手术时间与仪器可见时间的比率”与更高的手术技能相关。新的公开数据集可以在https://doi.org/10.5522/04/26511049上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Healthcare Technology Letters
Healthcare Technology Letters Health Professions-Health Information Management
CiteScore
6.10
自引率
4.80%
发文量
12
审稿时长
22 weeks
期刊介绍: Healthcare Technology Letters aims to bring together an audience of biomedical and electrical engineers, physical and computer scientists, and mathematicians to enable the exchange of the latest ideas and advances through rapid online publication of original healthcare technology research. Major themes of the journal include (but are not limited to): Major technological/methodological areas: Biomedical signal processing Biomedical imaging and image processing Bioinstrumentation (sensors, wearable technologies, etc) Biomedical informatics Major application areas: Cardiovascular and respiratory systems engineering Neural engineering, neuromuscular systems Rehabilitation engineering Bio-robotics, surgical planning and biomechanics Therapeutic and diagnostic systems, devices and technologies Clinical engineering Healthcare information systems, telemedicine, mHealth.
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