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首页> 外文期刊>International journal for numerical methods in biomedical engineering >Identification of tumor nodule in soft tissue: An inverse finite-element framework based on mechanical characterization
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Identification of tumor nodule in soft tissue: An inverse finite-element framework based on mechanical characterization

机译:软组织中肿瘤结节的鉴定:基于机械表征的逆有限元框架

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摘要

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.
机译:软组织中结节的鉴定和表征,包括它们的尺寸,形状和位置,为肿瘤鉴定提供基础。该研究提出了一种基于逆有限元(Fe)的计算框架,用于表征检查组织样本的尺寸并使用仪器触摸检测嵌入肿瘤结节的存在,而无需先验的解剖学知识。将逆分析应用于模型系统,人前列腺,并且基于反应力,该反作用力可以通过反肠机械探测和来自等效Fe模型的反应力,通过最小化误差函数来迭代地优化这两种情况,朝向目标解决方案。肿瘤结节可以通过其对前列腺的应力状态的影响来鉴定。使用从磁共振(MR)图像重建的现实前列腺模型进一步验证所提出的方法的有效性。结果表明,所提出的框架能够表征前列腺的关键几何索引并鉴定癌细胞的存在。因此,当与仪器触诊结合时,它具有潜力,用于初步诊断前列腺癌,以及其他类型的软组织中的潜在肿瘤。

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