医学诊断
产前诊断
计算机科学
人工智能
人口
医学
机器学习
胎儿
病理
怀孕
生物
遗传学
环境卫生
作者
Jiajie Tang,Jin Han,Yuxuan Jiang,Jiaxin Xue,Hang Zhou,Lianting Hu,Caiyuan Chen,Long Lu
出处
期刊:Bioengineering
[MDPI AG]
日期:2023-07-23
卷期号:10 (7): 873-873
被引量:2
标识
DOI:10.3390/bioengineering10070873
摘要
A global survey has revealed that genetic syndromes affect approximately 8% of the population, but most genetic diagnoses are typically made after birth. Facial deformities are commonly associated with chromosomal disorders. Prenatal diagnosis through ultrasound imaging is vital for identifying abnormal fetal facial features. However, this approach faces challenges such as inconsistent diagnostic criteria and limited coverage. To address this gap, we have developed FGDS, a three-stage model that utilizes fetal ultrasound images to detect genetic disorders. Our model was trained on a dataset of 2554 images. Specifically, FGDS employs object detection technology to extract key regions and integrates disease information from each region through ensemble learning. Experimental results demonstrate that FGDS accurately recognizes the anatomical structure of the fetal face, achieving an average precision of 0.988 across all classes. In the internal test set, FGDS achieves a sensitivity of 0.753 and a specificity of 0.889. Moreover, in the external test set, FGDS outperforms mainstream deep learning models with a sensitivity of 0.768 and a specificity of 0.837. This study highlights the potential of our proposed three-stage ensemble learning model for screening fetal genetic disorders. It showcases the model's ability to enhance detection rates in clinical practice and alleviate the burden on medical professionals.
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