Literature DB >> 25070021

Automatic modeling of pectus excavatum corrective prosthesis using artificial neural networks.

Pedro L Rodrigues1, Nuno F Rodrigues2, A C M Pinho3, Jaime C Fonseca4, Jorge Correia-Pinto5, João L Vilaça6.   

Abstract

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 ± 3.6mm. 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.
Copyright © 2014 IPEM. Published by Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Artificial neural networks; Image segmentation; Pectus excavatum; Prosthesis modelling

Mesh:

Year:  2014        PMID: 25070021     DOI: 10.1016/j.medengphy.2014.06.020

Source DB:  PubMed          Journal:  Med Eng Phys        ISSN: 1350-4533            Impact factor:   2.242


  2 in total

1.  Study on quantitative diagnosis model of TCM syndromes of post-stroke depression based on combination of disease and syndrome.

Authors:  Ji-Peng Yang; Hong Zhao; Yu-Zheng Du; Hong-Wen Ma; Qi Zhao; Chen Li; Yi Zhang; Bo Li; Hong-Xia Guo; Hai-Peng Ban; Hai-Ping Lin; Wen-Long Gu; Xiang-Gang Meng; Qian Song; Xiao-Xian Jin; Tao Jiang; Xin Du; Yi-Xin Dong; Hai-Lun Jiang; Nan-Fang Wu; Wei Liu; Chang Rao; Yan-Jie Tong; Yu Li; Jing-Ying Liu
Journal:  Medicine (Baltimore)       Date:  2021-03-26       Impact factor: 1.817

2.  The superior fault tolerance of artificial neural network training with a fault/noise injection-based genetic algorithm.

Authors:  Feng Su; Peijiang Yuan; Yangzhen Wang; Chen Zhang
Journal:  Protein Cell       Date:  2016-08-09       Impact factor: 14.870

  2 in total

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