Institute of Mechanical, Process and Energy Engineering, School of Engineering and Physical Sciences, Heriot-Watt University, Edinburgh, UK.
Servicio de Oncología Médica, Hospital 12 de Octubre, Madrid, Spain.
Int J Numer Method Biomed Eng. 2020 Aug;36(8):e3369. doi: 10.1002/cnm.3369. Epub 2020 Jun 15.
Identification and characterization of nodules in soft tissue, including their size, shape, and location, provide a basis for tumor identification. This study proposes an inverse finite-element (FE) based computational framework, for characterizing the size of examined tissue sample and detecting the presence of embedded tumor nodules using instrumented palpation, without a priori anatomical knowledge. The inverse analysis was applied to a model system, the human prostate, and was based on the reaction forces which can be obtained by trans-rectal mechanical probing and those from an equivalent FE model, which was optimized iteratively, by minimizing an error function between the two cases, toward the target solution. The tumor nodule can be identified through its influence on the stress state of the prostate. The effectiveness of the proposed method was further verified using a realistic prostate model reconstructed from magnetic resonance (MR) images. The results show the proposed framework to be capable of characterizing the key geometrical indices of the prostate and identifying the presence of cancerous nodules. Therefore, it has potential, when combined with instrumented palpation, for primary diagnosis of prostate cancer, and, potentially, solid tumors in other types of soft tissue.
识别和描述软组织中的结节,包括其大小、形状和位置,为肿瘤识别提供了基础。本研究提出了一种基于逆有限元(FE)的计算框架,用于在没有先验解剖知识的情况下,通过仪器触诊来描述被检查组织样本的大小,并检测嵌入的肿瘤结节的存在。逆分析应用于一个模型系统,即人类前列腺,其基于可以通过经直肠机械探测获得的反作用力,以及通过迭代优化的等效 FE 模型的反作用力,通过最小化两种情况下的误差函数来达到目标解。肿瘤结节可以通过其对前列腺的应力状态的影响来识别。该方法的有效性还使用从磁共振(MR)图像重建的现实前列腺模型进行了验证。结果表明,所提出的框架能够描述前列腺的关键几何指数并识别癌性结节的存在。因此,当与仪器触诊相结合时,它有可能用于前列腺癌的初步诊断,并且有可能用于其他类型软组织中的实体肿瘤。