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基于传感器的临床乳房检查中触诊和触诊模式的发现。

Sensor-Based Discovery of Search and Palpation Modes in the Clinical Breast Examination.

出版信息

Acad Med. 2024 Apr 1;99(4S Suppl 1):S89-S94. doi: 10.1097/ACM.0000000000005614. Epub 2024 Jan 9.

Abstract

PURPOSE

Successful implementation of precision education systems requires widespread adoption and seamless integration of new technologies with unique data streams that facilitate real-time performance feedback. This paper explores the use of sensor technology to quantify hands-on clinical skills. The goal is to shorten the learning curve through objective and actionable feedback.

METHOD

A sensor-enabled clinical breast examination (CBE) simulator was used to capture force and video data from practicing clinicians (N = 152). Force-by-time markers from the sensor data and a machine learning algorithm were used to parse physicians' CBE performance into periods of search and palpation and then these were used to investigate distinguishing characteristics of successful versus unsuccessful attempts to identify masses in CBEs.

RESULTS

Mastery performance from successful physicians showed stable levels of speed and force across the entire CBE and a 15% increase in force when in palpation mode compared with search mode. Unsuccessful physicians failed to search with sufficient force to detect deep masses ( F [5,146] = 4.24, P = .001). While similar proportions of male and female physicians reached the highest performance level, males used more force as noted by higher palpation to search force ratios ( t [63] = 2.52, P = .014).

CONCLUSIONS

Sensor technology can serve as a useful pathway to assess hands-on clinical skills and provide data-driven feedback. When using a sensor-enabled simulator, the authors found specific haptic approaches that were associated with successful CBE outcomes. Given this study's findings, continued exploration of sensor technology in support of precision education for hands-on clinical skills is warranted.

摘要

目的

成功实施精准教育系统需要广泛采用新技术,并将其与独特的数据流无缝集成,以提供实时绩效反馈。本文探讨了使用传感器技术来量化动手临床技能。目标是通过客观和可操作的反馈来缩短学习曲线。

方法

使用带传感器的临床乳房检查(CBE)模拟器从练习医生(N = 152)处获取力和视频数据。从传感器数据和机器学习算法中提取力-时间标记,将医生的 CBE 表现解析为搜索和触诊期,然后使用这些标记来研究 CBE 中识别肿块的成功与失败尝试之间的区别特征。

结果

成功医生的掌握表现显示,在整个 CBE 中速度和力都保持稳定水平,并且在触诊模式下比搜索模式下增加了 15%的力。不成功的医生未能以足够的力进行搜索,无法检测到深部肿块(F [5,146] = 4.24,P =.001)。虽然男女医生达到最高表现水平的比例相似,但男性使用的力更大,因为触诊到搜索的力比更高(t [63] = 2.52,P =.014)。

结论

传感器技术可以作为评估动手临床技能和提供数据驱动反馈的有用途径。当使用带传感器的模拟器时,作者发现了与成功的 CBE 结果相关的特定触觉方法。鉴于本研究的结果,有必要继续探索传感器技术,以支持动手临床技能的精准教育。

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