细菌性阴道病
阴道
卷积神经网络
金标准(测试)
阴道疾病
染色
细菌
人工智能
生物
病理
微生物学
内科学
医学
计算机科学
解剖
遗传学
作者
Zhongxiao Wang,Lei Zhang,Min Zhao,Ying Wang,Huihui Bai,Yufeng Wang,Can Rui,Chong Fan,Jiao Li,Na Li,Xinhuan Liu,Zitao Wang,Yanyan Si,Andrea Feng,Mingxuan Li,Qiongqiong Zhang,Zhe Yang,Mengdi Wang,Wei Wu,Yang Cao
摘要
Bacterial vaginosis (BV) is caused by the excessive and imbalanced growth of bacteria in vagina, affecting 30 to 50% of women. Gram staining followed by Nugent scoring based on bacterial morphotypes under the microscope is considered the gold standard for BV diagnosis; this method is often labor-intensive and time-consuming, and results vary from person to person. We developed and optimized a convolutional neural network (CNN) model and evaluated its ability to automatically identify and classify three categories of Nugent scores from microscope images.
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