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首页> 外文期刊>Pediatrics: Official Publication of the American Academy of Pediatrics >Computer-Aided Recognition of Facial Attributes for Fetal Alcohol Spectrum Disorders
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Computer-Aided Recognition of Facial Attributes for Fetal Alcohol Spectrum Disorders

机译:胎儿酒精频谱异常的面部属性的计算机辅助识别

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OBJECTIVES: To compare the detection of facial attributes by computer-based facial recognition software of 2-D images against standard, manual examination in fetal alcohol spectrum disorders (FASD). METHODS: Participants were gathered from the Fetal Alcohol Syndrome Epidemiology Research database. Standard frontal and oblique photographs of children were obtained during a manual, in-person dysmorphology assessment. Images were submitted for facial analysis conducted by the facial dysmorphology novel analysis technology (an automated system), which assesses ratios of measurements between various facial landmarks to determine the presence of dysmorphic features. Manual blinded dysmorphology assessments were compared with those obtained via the computer-aided system. RESULTS: Areas under the curve values for individual receiver-operating characteristic curves revealed the computer-aided system (0.88 ?± 0.02) to be comparable to the manual method (0.86 ?± 0.03) in detecting patients with FASD. Interestingly, cases of alcohol-related neurodevelopmental disorder (ARND) were identified more efficiently by the computer-aided system (0.84 ?± 0.07) in comparison to the manual method (0.74 ?± 0.04). A facial gestalt analysis of patients with ARND also identified more generalized facial findings compared to the cardinal facial features seen in more severe forms of FASD. CONCLUSIONS: We found there was an increased diagnostic accuracy for ARND via our computer-aided method. As this category has been historically difficult to diagnose, we believe our experiment demonstrates that facial dysmorphology novel analysis technology can potentially improve ARND diagnosis by introducing a standardized metric for recognizing FASD-associated facial anomalies. Earlier recognition of these patients will lead to earlier intervention with improved patient outcomes.
机译:目的:比较基于计算机的二维图像面部识别软件对面部属性的检测与胎儿酒精谱系障碍(FASD)的标准手动检查之间的比较。方法:从胎儿酒精综合症流行病学研究数据库中收集参与者。在手动的,亲自面对的畸形评估中获得了儿童的标准正面和斜向照片。图像被提交用于由面部畸形学新分析技术(自动化系统)进行的面部分析,该技术评估各种面部界标之间的测量比率以确定畸形特征的存在。将手动盲态畸形评估与通过计算机辅助系统获得的评估进行了比较。结果:单个接收器操作特征曲线的曲线值下方的区域显示,在检测FASD患者时,计算机辅助系统(0.88±±0.02)与手动方法(0.86±±0.03)相当。有趣的是,与人工方法(0.74±±0.04)相比,计算机辅助系统(0.84±±0.07)可以更有效地识别酒精相关的神经发育障碍(ARND)。与在更严重形式的FASD中所见的主要面部特征相比,对ARND患者的面部格式塔分析也发现了更广泛的面部发现。结论:我们发现通过计算机辅助方法对ARND的诊断准确性有所提高。由于这一类别在历史上一直难以诊断,因此我们相信我们的实验证明,面部畸形学新颖的分析技术可以通过引入用于识别与FASD相关的面部异常的标准化指标来改善ARND诊断。对这些患者的早期识别将导致早期干预,并改善患者预后。

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