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Detection of Rare Genetic Diseases using Facial 2D Images with Transfer Learning

机译:使用转移学习使用面部2D图像检测稀有遗传疾病

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Around 6-8% of people are affected by rare genetic disorders in the world. Due to unavailability of proper identification of gene variants causing these rare disorders, the genetic tests for many of them do not exist with an exception to some common conditions like Down's Syndrome. A limited number of individuals have the proper training and ability to recognize these disorders and have to depend on the pronounced facial features which occur in about 30-40% of these diseases. Fine-tuning of the pre-trained model VGGFace(with ResNet50 network architecture) on our dataset comprising of 12 classes of rare genetic syndromes leads to a top accuracy of 97.66% and an F1 score of 0.86. On using a smaller dataset with 8 classes of syndromes same as Clinical Face Phenotype Space, the state-of-the-art, our model produces a top accuracy of 98.1% and an F1 score of 0.92. This could be used to screen for rare genetic diseases in newborns.
机译:大约6-8%的人受到世界上罕见的遗传疾病的影响。由于无法鉴定基因变体的不可用,导致这些罕见疾病,其中许多的遗传测试不存在于像唐氏综合症一样的一些常见条件。有限数量的个人具有适当的培训和能力来识别这些疾病,并且必须取决于这些疾病的大约30-40%的明显面部特征。在我们的数据集上进行预先调整的预训练模型VGGFace(带Reset50网络架构),包括12类稀有遗传综合征,导致高精度为97.66%,F1分数为0.86。在使用具有8级综合征的较小数据集与临床面部表型空间相同的较小数据集,我们的模型产生了98.1%的最高精度,F1得分为0.92。这可用于筛选新生儿的稀有遗传疾病。

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