Blanck-Lubarsch Moritz, Dirksen Dieter, Feldmann Reinhold, Bormann Eike, Hohoff Ariane
Department of Orthodontics, University of Münster, Münster, Germany.
Department of Prosthodontics and Biomaterials, University of Münster, Münster, Germany.
Front Pediatr. 2022 Jan 21;9:707566. doi: 10.3389/fped.2021.707566. eCollection 2021.
The fetal alcohol spectrum disorder (FASD) is a complex and heterogeneous disorder, caused by gestational exposure to alcohol. Patients with fetal alcohol syndrome (FAS-most severe form of FASD) show abnormal facial features. The aim of our study was to use 3D- metric facial data of patients with FAS and identify machine learning methods, which could improve and objectify the diagnostic process.
Facial 3D scans of 30 children with FAS and 30 controls were analyzed. Skeletal, facial, dental and orthodontic parameters as collected in previous studies were used to evaluate their value for machine learning based diagnosis. Three machine learning methods, decision trees, support vector machine and k-nearest neighbors were tested with respect to their accuracy and clinical practicability.
All three of the above machine learning methods showed a high accuracy of 89.5%. The three predictors with the highest scores were: Midfacial length, palpebral fissure length of the right eye and nose breadth at sulcus nasi.
With the parameters right palpebral fissure length, midfacial length and nose breadth at sulcus nasi, machine learning was an efficient method for the objective and reliable detection of patients with FAS within our patient group. Of the three tested methods, decision trees would be the most helpful and easiest to apply method for everyday clinical and private practice.
胎儿酒精谱系障碍(FASD)是一种复杂的异质性疾病,由孕期接触酒精所致。胎儿酒精综合征(FASD最严重的形式)患者表现出异常面部特征。我们研究的目的是使用FAS患者的三维面部数据,并确定可改善诊断过程并使其客观化的机器学习方法。
分析了30例FAS患儿和30例对照的面部三维扫描图像。采用先前研究中收集的骨骼、面部、牙齿和正畸参数来评估其在基于机器学习的诊断中的价值。对决策树、支持向量机和k近邻三种机器学习方法的准确性和临床实用性进行了测试。
上述三种机器学习方法的准确率均高达89.5%。得分最高的三个预测指标为:面中部长度、右眼睑裂长度和鼻根处鼻宽。
利用右眼睑裂长度、面中部长度和鼻根处鼻宽这些参数,机器学习是在我们的患者群体中客观、可靠地检测FAS患者的有效方法。在三种测试方法中,决策树对于日常临床和私人执业来说是最有用且最易于应用的方法。