| Literature DB >> 34188791 |
Shuai Liu1, Zheng Chen1, Huahui Zhou1, Kunlin He1, Meiyu Duan1, Qichen Zheng1, Pengcheng Xiong1, Lan Huang1, Qiong Yu2, Guoxiong Su3, Fengfeng Zhou1.
Abstract
Results: This study developed mole detection and segmentation software DiaMole using mobile phone images. DiaMole utilized multiple deep learning algorithms for the object detection problem and mole segmentation problem. An object detection algorithm generated a rectangle tightly surrounding a mole in the mobile phone image. Moreover, the segmentation algorithm detected the precise boundary of that mole. Three deep learning algorithms were evaluated for their object detection performance. The popular performance metric mean average precision (mAP) was used to evaluate the algorithms. Among the utilized algorithms, the Faster R-CNN could achieve the best mAP = 0.835, and the integrated algorithm could achieve the mAP = 0.4228. Although the integrated algorithm could not achieve the best mAP, it can avoid the missing of detecting the moles. A popular Unet model was utilized to find the precise mole boundary. Clinical users may annotate the detected moles based on their experiences. Conclusions: DiaMole is user-friendly software for researchers focusing on skin lesions. DiaMole may automatically detect and segment the moles from the mobile phone skin images. The users may also annotate each candidate mole according to their own experiences. The automatically calculated mole image masks and the annotations may be saved for further investigations.Entities:
Mesh:
Year: 2021 PMID: 34188791 PMCID: PMC8195635 DOI: 10.1155/2021/6698176
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682