Dense anatomical annotation of slit-lamp images improves the performance of deep learning for the diagnosis of ophthalmic disorders.
Wangting LiYahan YangKai ZhangErping LongLin HeLei ZhangYi ZhuChuan ChenZhenzhen LiuXiaohang WuDongyuan YunJian LvYizhi LiuXiyang LiuHaotian LinPublished in: Nature biomedical engineering (2020)
The development of artificial intelligence algorithms typically demands abundant high-quality data. In medicine, the datasets that are required to train the algorithms are often collected for a single task, such as image-level classification. Here, we report a workflow for the segmentation of anatomical structures and the annotation of pathological features in slit-lamp images, and the use of the workflow to improve the performance of a deep-learning algorithm for diagnosing ophthalmic disorders. We used the workflow to generate 1,772 general classification labels, 13,404 segmented anatomical structures and 8,329 pathological features from 1,772 slit-lamp images. The algorithm that was trained with the image-level classification labels and the anatomical and pathological labels showed better diagnostic performance than the algorithm that was trained with only the image-level classification labels, performed similar to three ophthalmologists across four clinically relevant retrospective scenarios and correctly diagnosed most of the consensus outcomes of 615 clinical reports in prospective datasets for the same four scenarios. The dense anatomical annotation of medical images may improve their use for automated classification and detection tasks.
Keyphrases
- deep learning
- artificial intelligence
- convolutional neural network
- machine learning
- big data
- loop mediated isothermal amplification
- rna seq
- electronic health record
- high resolution
- body composition
- working memory
- metabolic syndrome
- weight loss
- adipose tissue
- high throughput
- quantum dots
- skeletal muscle
- mass spectrometry
- data analysis