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Automatic modeling of pectus excavatum corrective prosthesis using artificial neural networks

机译:使用人工神经网络自动建模眼底凹陷矫正假体

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摘要

Pectus excavatum is the most common deformity of the thorax. Pre-operative diagnosis usually includes Computed Tomography (CT) to successfully employ a thoracic prosthesis for anterior chest wall remodeling. Aiming at the elimination of radiation exposure, this paper presents a novel methodology for the replacement of CT by a 3D laser scanner (radiation-free) for prosthesis modeling.The complete elimination of CT is based on an accurate determination of ribs position and prosthesis placement region through skin surface points. The developed solution resorts to a normalized and combined outcome of an artificial neural network (ANN) set. Each ANN model was trained with data vectors from 165 male patients and using soft tissue thicknesses (STT) comprising information from the skin and rib cage (automatically determined by image processing algorithms). Tests revealed that ribs position for prosthesis placement and modeling can be estimated with an average error of 5.0 ± 3.6 mm. One also showed that the ANN performance can be improved by introducing a manually determined initial STT value in the ANN normalization procedure (average error of 2.82 ± 0.76 mm). Such error range is well below current prosthesis manual modeling (approximately 11 mm), which can provide a valuable and radiation-free procedure for prosthesis personalization.
机译:直肠外皮是最常见的胸部畸形。术前诊断通常包括计算机断层扫描(CT),以成功地使用胸部假体进行前胸壁重塑。为了消除放射线暴露,本文提出了一种新颖的方法,用3D激光扫描仪(无辐射)替代CT进行假体建模。完全消除CT是基于精确确定肋骨位置和假体位置通过皮肤表面点的区域。开发的解决方案诉诸于人工神经网络(ANN)集的标准化和组合结果。每个ANN模型都使用来自165位男性患者的数据向量以及使用软组织厚度(STT)进行训练,该厚度包括来自皮肤和肋骨保持架的信息(由图像处理算法自动确定)。测试表明,用于假体放置和建模的肋骨位置可以估计为5.0±3.6 mm的平均误差。一个人还表明,通过在ANN标准化程序中引入手动确定的初始STT值(平均误差为2.82±0.76 mm),可以提高ANN的性能。该误差范围远低于目前的假体手动建模(大约11毫米),可以为假体个性化提供有价值且无辐射的程序。

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