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Classifying vertical facial deformity using supervised and unsupervised learning.

机译:使用监督和无监督学习对垂直面部畸形进行分类。

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OBJECTIVES: To evaluate the potential for machine learning techniques to identify objective criteria for classifying vertical facial deformity. METHODS: 19 parameters were determined from 131 lateral skull radiographs. Classifications were induced from raw data with simple visualisation, C5.0 and Kohonen feature maps; and using a Point Distribution Model (PDM) of shape templates comprising points taken from digitised radiographs. RESULTS: The induced decision trees enable a direct comparison of clinicians' idiosyncrasies in classification. Unsupervised algorithms induce models that are potentially more objective, but their blackbox nature makes them unsuitable for clinical application. The PDM methodology gives dramatic visualisations of two modes separating horizontal and vertical facial growth. Kohonen feature maps favour one clinician and PDM the other. Clinical response suggests that while Clinician 1 places greater weight on 5 of 6 parameters, Clinician 2 relies on more parameters that capture facial shape. CONCLUSIONS: While machine learning and statistical analyses classify subjects for vertical facial height, they have limited application in their present form. The supervised learning algorithm C5.0 is effective for generating rules for individual clinicians but its inherent bias invalidates its use for objective classification of facial form for research purposes. On the other hand, promising results from unsupervised strategies (especially the PDM) suggest a potential use for objective classification and further identification and analysis of ambiguous cases. At present, such methodologies may be unsuitable for clinical application because of the invisibility of their underlying processes. Further study is required with additional patient data and a wider group of clinicians.
机译:目的:评估潜在的机器学习技术,以识别客观标准对面部垂直畸形进行分类。方法:从131副颅骨X光片确定19个参数。通过简单的可视化,C5.0和Kohonen特征图从原始数据得出分类;使用形状模板的点分布模型(PDM),其中包括从数字化X射线照片中获取的点。结果:诱导决策树可以直接比较临床医生的分类特质。无监督算法会诱发可能更客观的模型,但其黑盒性质使其不适合临床应用。 PDM方法论可以使两种形式的脸部水平和垂直分离变得更加生动。 Kohonen功能图偏爱一名临床医生,而偏爱另一名PDM。临床反应表明,虽然临床医生1在6个参数中的5个参数上具有更大的权重,但临床医生2却依赖更多的参数来捕捉面部形状。结论:虽然机器学习和统计分析对受试者的垂直面部高度进行了分类,但它们在当前形式中的应用有限。监督学习算法C5.0可有效地为各个临床医生生成规则,但其固有的偏向使它无法用于研究目的的面部形式的客观分类。另一方面,无监督策略(尤其是PDM)的有希望的结果表明,该方法可能用于客观分类以及进一步识别和分析歧义病例。目前,由于这些方法的潜在过程不可见,因此可能不适合临床应用。需要更多的患者数据和更广泛的临床医生进行进一步的研究。

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