School of Medicine-HCFMUSP/LIM01, University of São Paulo, São Paulo, Brazil.
Artif Organs. 2010 Jul;34(7):E215-21. doi: 10.1111/j.1525-1594.2010.00994.x. Epub 2010 Jun 2.
This work presents an application of the paraconsistent artificial neural network (PANN) in the analysis of cephalometric variables and provides an orthodontic diagnosis. An expert's analysis is subject to the inherent imprecision of measurements, registers, and individual variability of physician visual analysis. Patient input cephalometric values are compared with means drawn from individuals considered normal in the cephalometric point of view by the PANN. This reference is constituted by individuals from 6 to 18 years old, both genders. The applied cephalometric analysis was targeted to measure skeletal and dental discrepancies and established a cephalometric diagnosis. The analysis results in degrees of skeletal, anteroposterior, and dental discrepancy, pertinent to upper and lower incisors. A sample of 120 orthodontic patients was processed by the proposed model and three orthodontic experts. Comparisons between the model and the human expert's performance provided kappa indexes that varied from moderate to almost perfect agreement. The agreement between the model and specialist's performance was equivalent. In addition, the model pointed out contradictions presented in the data that were not noticed by the orthodontists, which highlight the contribution that this kind of system could carry out in the orthodontics decision support.
这项工作提出了一种将不协调人工神经网络(PANN)应用于分析头影测量变量并提供正畸诊断的方法。专家的分析受到测量、记录和医生视觉分析个体差异的固有不准确性的影响。患者输入的头影测量值与 PANN 认为在头影测量角度正常的个体的平均值进行比较。该参考由 6 至 18 岁的男女个体组成。所应用的头影测量分析旨在测量骨骼和牙齿差异,并建立头影测量诊断。分析结果以骨骼、前后向和牙齿差异的度数表示,适用于上切牙和下切牙。该模型对 120 名正畸患者进行了处理,并与三位正畸专家进行了比较。模型与人类专家表现之间的比较提供了从中度到几乎完美一致的kappa 指数。模型与专家表现的一致性相当。此外,该模型指出了正畸医生没有注意到的数据中的矛盾,这突出了这种系统在正畸决策支持中可能发挥的作用。