Sheikh Zayed Institute for Pediatric Surgical Innovation, Children's National Hospital, Washington, D.C., USA.
Department of Biostatistics and Informatics, Colorado School of Public Health, University of Colorado Anschutz Medical Campus, Aurora, CO, USA.
Mol Genet Genomic Med. 2021 May;9(5):e1636. doi: 10.1002/mgg3.1636. Epub 2021 Mar 27.
Patients with Noonan and Williams-Beuren syndrome present similar facial phenotypes modulated by their ethnic background. Although distinctive facial features have been reported, studies show a variable incidence of those characteristics in populations with diverse ancestry. Hence, a differential diagnosis based on reported facial features can be challenging. Although accurate diagnoses are possible with genetic testing, they are not available in developing and remote regions.
We used a facial analysis technology to identify the most discriminative facial metrics between 286 patients with Noonan and 161 with Williams-Beuren syndrome with diverse ethnic background. We quantified the most discriminative metrics, and their ranges both globally and in different ethnic groups. We also created population-based appearance images that are useful not only as clinical references but also for training purposes. Finally, we trained both global and ethnic-specific machine learning models with previous metrics to distinguish between patients with Noonan and Williams-Beuren syndromes.
We obtained a classification accuracy of 85.68% in the global population evaluated using cross-validation, which improved to 90.38% when we adapted the facial metrics to the ethnicity of the patients (p = 0.024).
Our facial analysis provided for the first time quantitative reference facial metrics for the differential diagnosis Noonan and Williams-Beuren syndromes in diverse populations.
努南和威廉姆斯-比伦综合征患者表现出相似的面部表型,受其种族背景的影响而有所不同。尽管已经报道了一些独特的面部特征,但研究表明,在具有不同祖先背景的人群中,这些特征的发生率存在差异。因此,基于报道的面部特征进行鉴别诊断可能具有挑战性。虽然通过基因测试可以进行准确的诊断,但在发展中国家和偏远地区则无法进行。
我们使用面部分析技术来识别 286 名努南综合征患者和 161 名威廉姆斯-比伦综合征患者中具有不同种族背景的最具鉴别性的面部指标。我们量化了最具鉴别性的指标及其在全球和不同种族群体中的范围。我们还创建了基于人群的外观图像,这些图像不仅可作为临床参考,还有助于培训目的。最后,我们使用之前的指标训练了全球和特定种族的机器学习模型,以区分努南综合征和威廉姆斯-比伦综合征患者。
我们通过交叉验证在全球人群中获得了 85.68%的分类准确率,当我们将面部指标适应患者的种族时,准确率提高到 90.38%(p=0.024)。
我们的面部分析首次为不同人群中努南和威廉姆斯-比伦综合征的鉴别诊断提供了定量参考面部指标。