Intelligent ultrasonic aspirator: Advancing tissue differentiation through hierarchical classification during hand-held resection

Niclas Erben , Daniel Schetelig , Jan Buggisch , Matteo Mario Bonsanto , Steffen Buschschlüter , Floris Ernst
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引用次数: 0

Abstract

Modern neurosurgery strives to maximize tumor removal while preserving healthy tissue integrity. Accurate intraoperative differentiation between tumor and healthy tissue is crucial yet challenging. Often neurosurgeons rely on their experience and haptic feedback during palpation to distinguish between tumor and healthy tissue. A commonly used hand-held tool for tissue removal during neurosurgery is the ultrasonic aspirator, which changes its electrical properties as it interacts with tissue. The goal is to equip the ultrasonic aspirator with the ability to differentiate between different types of tissue while at the same time not interfering with the surgical workflow and providing comprehensible outcomes. To this end, a hierarchical classification approach is employed as a proof of concept, enabling precise identification of tissue stiffness during resection.

The hierarchical approach is compared with the standard flat classification, commonly used in machine learning. Within the hierarchical approach, two strategies are employed: mandatory leaf-node predictions (MLNP) and non-mandatory leaf-node predictions (NMLNP). The NMLNP allows prediction to revert to a parent node when certainty is low. Data are acquired on three artificial tissue models – differing in stiffness – with an ultrasonic aspirator in a hand-held manner. The dataset comprises 1,821 data points for training and 186 for testing after balancing.

The results indicate a slight performance advantage for the hierarchical classification MLNP approach over the flat classification approach in the absence of confidence thresholds, with weighted F2-scores of 0.781 and 0.762, respectively. However, the application of confidence thresholds results in both approaches exhibiting comparable performance, with the hierarchical NMLNP approach achieving a weighted F1-score of 0.920, thereby demonstrating superior overall performance. The effects of enforcing these thresholds and excluding data with low certainty are thoroughly investigated. This work emphasizes the feasibility of tissue differentiation using a hand-held ultrasound aspirator while resecting tissue. Moreover, it highlights the capability of hierarchical classification in advancing tissue differentiation accuracy during neurosurgical procedures, which could ultimately aid surgeons and enhance the safety of intraoperative workflows.

智能超声波吸引器:在手持切除过程中通过分级分类促进组织分化
现代神经外科力求最大限度地切除肿瘤,同时保留健康组织的完整性。术中准确区分肿瘤和健康组织至关重要,但也极具挑战性。神经外科医生通常依靠经验和触诊时的触觉反馈来区分肿瘤和健康组织。神经外科手术中常用的手持式组织切除工具是超声波吸引器,它在与组织相互作用时会改变其电气特性。我们的目标是使超声波吸引器具备区分不同类型组织的能力,同时不干扰手术工作流程并提供可理解的结果。为此,我们采用了分层分类方法作为概念验证,以便在切除过程中精确识别组织硬度。在分层方法中,采用了两种策略:强制性叶节点预测(MLNP)和非强制性叶节点预测(NMLNP)。NMLNP 允许在确定性较低时将预测返回到父节点。数据是通过手持式超声波抽吸器在三种不同硬度的人工组织模型上采集的。结果表明,在没有置信度阈值的情况下,分层分类 MLNP 方法的性能略优于平面分类方法,加权 F2 分数分别为 0.781 和 0.762。然而,应用置信度阈值后,两种方法的性能相当,分层 NMLNP 方法的加权 F1 分数达到 0.920,从而显示出更优越的整体性能。对强制执行这些阈值和排除低确定性数据的效果进行了深入研究。这项工作强调了在切除组织时使用手持式超声吸引器进行组织分化的可行性。此外,它还强调了分级分类在神经外科手术过程中提高组织分化准确性的能力,最终可帮助外科医生提高术中工作流程的安全性。
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来源期刊
Biomedical engineering advances
Biomedical engineering advances Bioengineering, Biomedical Engineering
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