Department of Craniofacial Anomalies, Poznań University of Medical Sciences, Collegium Maius, Fredry 10, 61-701 Poznań, Poland.
Department of Biosystems Engineering, Poznan University of Life Sciences, Wojska Polskiego 50, 60-637 Poznań, Poland.
Sensors (Basel). 2021 Sep 8;21(18):6008. doi: 10.3390/s21186008.
The analog methods used in the clinical assessment of the patient's chronological age are subjective and characterized by low accuracy. When using those methods, there is a noticeable discrepancy between the chronological age and the age estimated based on relevant scientific studies. Innovations in the field of information technology are increasingly used in medicine, with particular emphasis on artificial intelligence methods. The paper presents research aimed at developing a new, effective methodology for the assessment of the chronological age using modern IT methods. In this paper, a study was conducted to determine the features of pantomographic images that support the determination of metric age, and neural models were produced to support the process of identifying the age of children and adolescents. The whole conducted work was a new methodology of metric age assessment. The result of the conducted study is a set of 21 original indicators necessary for the assessment of the chronological age with the use of computer image analysis and neural modelling, as well as three non-linear models of radial basis function networks (RBF), whose accuracy ranges from 96 to 99%. The result of the research are three neural models that determine the chronological age.
临床评估患者实际年龄所使用的模拟方法具有主观性,且准确性较低。在使用这些方法时,实际年龄与根据相关科学研究估计的年龄之间存在明显差异。信息技术领域的创新越来越多地应用于医学领域,尤其侧重于人工智能方法。本文提出了一项研究,旨在使用现代 IT 方法开发一种新的、有效的实际年龄评估方法。本文开展了一项研究,以确定支持确定度量年龄的动态图像特征,并生成神经模型以支持识别儿童和青少年年龄的过程。整个开展的工作是一种新的度量年龄评估方法。该研究的结果是一套 21 个原始指标,这些指标对于使用计算机图像分析和神经建模评估实际年龄是必要的,以及三个径向基函数网络 (RBF) 的非线性模型,其准确性范围从 96%到 99%。该研究的结果是三个确定实际年龄的神经模型。