Effectiveness of Human-Artificial Intelligence Collaboration in Cephalometric Landmark Detection.
Van Nhat Thang LeJunhyeok KangIl-Seok OhJae-Gon KimYeon-Mi YangDae-Woo LeePublished in: Journal of personalized medicine (2022)
Detection of cephalometric landmarks has contributed to the analysis of malocclusion during orthodontic diagnosis. Many recent studies involving deep learning have focused on head-to-head comparisons of accuracy in landmark identification between artificial intelligence (AI) and humans. However, a human-AI collaboration for the identification of cephalometric landmarks has not been evaluated. We selected 1193 cephalograms and used them to train the deep anatomical context feature learning (DACFL) model. The number of target landmarks was 41. To evaluate the effect of human-AI collaboration on landmark detection, 10 images were extracted randomly from 100 test images. The experiment included 20 dental students as beginners in landmark localization. The outcomes were determined by measuring the mean radial error (MRE), successful detection rate (SDR), and successful classification rate (SCR). On the dataset, the DACFL model exhibited an average MRE of 1.87 ± 2.04 mm and an average SDR of 73.17% within a 2 mm threshold. Compared with the beginner group, beginner-AI collaboration improved the SDR by 5.33% within a 2 mm threshold and also improved the SCR by 8.38%. Thus, the beginner-AI collaboration was effective in the detection of cephalometric landmarks. Further studies should be performed to demonstrate the benefits of an orthodontist-AI collaboration.
Keyphrases
- artificial intelligence
- deep learning
- machine learning
- big data
- convolutional neural network
- endothelial cells
- loop mediated isothermal amplification
- label free
- real time pcr
- systematic review
- pluripotent stem cells
- type diabetes
- optic nerve
- adipose tissue
- oral health
- optical coherence tomography
- case control
- skeletal muscle
- quantum dots