Sant'Anna School of Advanced Studies, The BioRobotics Institute, 56025 Pisa, Italy.
Department of Information Engineering, Università Degli Studi di Firenze, 50121 Florence, Italy.
Sensors (Basel). 2019 May 31;19(11):2512. doi: 10.3390/s19112512.
This study presents a platform for ex-vivo detection of cancer nodules, addressing automation of medical diagnoses in surgery and associated histological analyses. The proposed approach takes advantage of the property of cancer to alter the mechanical and acoustical properties of tissues, because of changes in stiffness and density. A force sensor and an ultrasound probe were combined to detect such alterations during force-regulated indentations. To explore the specimens, regardless of their orientation and shape, a scanned area of the test sample was defined using shape recognition applying optical background subtraction to the images captured by a camera. The motorized platform was validated using seven phantom tissues, simulating the mechanical and acoustical properties of ex-vivo diseased tissues, including stiffer nodules that can be encountered in pathological conditions during histological analyses. Results demonstrated the platform's ability to automatically explore and identify the inclusions in the phantom. Overall, the system was able to correctly identify up to 90.3% of the inclusions by means of stiffness in combination with ultrasound measurements, paving pathways towards robotic palpation during intraoperative examinations.
本研究提出了一种用于体外检测癌结节的平台,旨在实现手术中医疗诊断的自动化以及相关的组织学分析。所提出的方法利用癌症改变组织的机械和声学特性的特性,因为刚度和密度发生变化。力传感器和超声探头结合使用,在力调节压痕过程中检测这种变化。为了探索样本,无论其方向和形状如何,使用形状识别通过对摄像头捕获的图像进行光学背景减除来定义测试样本的扫描区域。使用七种模拟离体病变组织的机械和声学特性的体模组织验证了电动平台,包括在组织学分析过程中病理条件下可能遇到的更硬的结节。结果表明,该平台具有自动探索和识别体模中的内含物的能力。总体而言,该系统通过结合使用刚度和超声测量,能够正确识别高达 90.3%的内含物,为术中检查期间的机器人触诊铺平了道路。