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首页> 外文期刊>Scientific reports. >Development of a computer-aided tool for the pattern recognition of facial features in diagnosing Turner syndrome: comparison of diagnostic accuracy with clinical workers
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Development of a computer-aided tool for the pattern recognition of facial features in diagnosing Turner syndrome: comparison of diagnostic accuracy with clinical workers

机译:开发用于诊断特纳综合征的面部特征模式识别的计算机辅助工具:将诊断准确性与临床工作者进行比较

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Technologies applied for the recognition of facial features in diagnosing certain disorders seem to be promising in reducing the medical burden and improve the efficiency. This pilot study aimed to develop a computer-assisted tool for the pattern recognition of facial features for diagnosing Turner syndrome (TS). Photographs of 54 patients with TS and 158 female controls were collected from July 2016 to May 2017. Finally, photographs of 32 patients with TS and 96 age-matched controls were included in the study that were further divided equally into training and testing groups. The process of automatic classification consisted of image preprocessing, facial feature extraction, feature reduction and fusion, automatic classification, and result presentation. A total of 27 physicians and 21 medical students completed a web-based test including the same photographs used in computer testing. After training, the automatic facial classification system for diagnosing TS achieved a 68.8% sensitivity and 87.5% specificity (and a 67.6% average sensitivity and 87.9% average specificity after resampling), which was significantly higher than the average sensitivity (57.4%, P??0.001) and specificity (75.4%, P??0.001) of 48 participants, respectively. The accuracy of this system was satisfactory and better than the diagnosis by clinicians. However, the system necessitates further improvement for achieving a high diagnostic accuracy in clinical practice.
机译:在减少某些医疗负担和提高效率方面,用于识别面部特征的技术在诊断某些疾病方面似乎很有希望。这项初步研究旨在开发一种计算机辅助工具,用于面部特征的模式识别,以诊断特纳综合症(TS)。从2016年7月至2017年5月,收集了54例TS患者和158例女性对照的照片。最后,研究中包括了32例TS患者和96例年龄相匹配的对照的照片,并将这些照片进一步分为训练组和测试组。自动分类的过程包括图像预处理,面部特征提取,特征约简和融合,自动分类和结果表示。共有27位医师和21位医学生完成了基于网络的测试,其中包括与计算机测试中使用的照片相同的照片。训练后,用于诊断TS的自动面部分类系统达到了68.8%的灵敏度和87.5%的特异性(重采样后的平均灵敏度为67.6%和87.9%的平均值),明显高于平均灵敏度(57.4%,P <0.05)。 <0.001)和特异性(75.4%,P <0.001)(48)。该系统的准确性令人满意,并且优于临床医生的诊断。然而,该系统需要进一步改进以在临床实践中实现高诊断精度。

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