Kim Jong-Hwan, Kwon Segi, Fu Jirui, Park Joon-Hyuk
Mechanical & Systems Engineering, Korea Military Academy, Seoul 01805, Korea.
J-Solution, Daegu 41566, Korea.
J Imaging. 2022 Oct 14;8(10):283. doi: 10.3390/jimaging8100283.
Early and accurate detection of scalp hair loss is imperative to provide timely and effective treatment plans to halt further progression and save medical costs. Many techniques have been developed leveraging deep learning to automate the hair loss detection process. However, the accuracy and robustness of assessing hair loss severity still remain a challenge and barrier for transitioning such a technique into practice. The presented work proposes an efficient and accurate algorithm to classify hair follicles and estimate hair loss severity, which was implemented and validated using a multitask deep learning method via a Mask R-CNN framework. A microscopic image of the scalp was resized, augmented, then processed through pre-trained ResNet models for feature extraction. The key features considered in this study concerning hair loss severity include the number of hair follicles, the thickness of the hair, and the number of hairs in each hair follicle. Based on these key features, labeling of hair follicles () were performed on the images collected from 10 men in varying stages of hair loss. More specifically, Mask R-CNN was applied for instance segmentation of the hair follicle region and to classify the hair follicle state into three categories, following the labeling convention (). Based on the state of each hair follicle captured from a single image, an estimation of hair loss severity was determined for that particular region of the scalp, namely , and by combining of multiple images taken and processed from different parts of the scalp, we constructed the Pavg and visualized in a heatmap to illustrate the overall hair loss type and condition. The proposed hair follicle classification and hair loss severity estimation using Mask R-CNN demonstrated a more efficient and accurate algorithm compared to other methods previously used, enhancing the classification accuracy by 4 to 15%. This performance supports its potential for use in clinical settings to enhance the accuracy and efficiency of current hair loss diagnosis and prognosis techniques.
早期准确检测头皮脱发对于提供及时有效的治疗方案以阻止脱发进一步发展并节省医疗成本至关重要。已经开发了许多利用深度学习的技术来实现脱发检测过程的自动化。然而,评估脱发严重程度的准确性和稳健性仍然是将此类技术转化为实际应用的挑战和障碍。本文提出了一种高效准确的算法来对毛囊进行分类并估计脱发严重程度,该算法通过Mask R-CNN框架使用多任务深度学习方法进行实现和验证。头皮的微观图像先进行尺寸调整、数据增强,然后通过预训练的ResNet模型进行特征提取。本研究中考虑的与脱发严重程度相关的关键特征包括毛囊数量、头发粗细以及每个毛囊中的毛发数量。基于这些关键特征,对从10名处于不同脱发阶段的男性收集的图像进行毛囊标注()。更具体地说,Mask R-CNN用于毛囊区域的实例分割,并按照标注惯例()将毛囊状态分为三类。根据从单个图像中捕获的每个毛囊的状态,确定头皮该特定区域的脱发严重程度估计值,即,并且通过组合从头皮不同部位拍摄和处理的多个图像的,我们构建了Pavg并在热图中可视化以说明整体脱发类型和状况。与先前使用的其他方法相比,所提出的使用Mask R-CNN进行毛囊分类和脱发严重程度估计的算法展示了更高的效率和准确性,分类准确率提高了4%至15%。这一性能支持了其在临床环境中用于提高当前脱发诊断和预后技术的准确性和效率的潜力。