使用混合胶囊CNN自主检测指甲疾病:一种新的早期诊断深度学习方法。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Gunjan Shandilya, Sheifali Gupta, Salil Bharany, Ateeq Ur Rehman, Upinder Kaur, Hafizan Mat Som, Seada Hussen
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引用次数: 0

摘要

即使是轻微的指甲感染也可能表明严重的潜在健康问题。趾下黑色素瘤是最严重的一种,因为它比其他疾病在更晚的阶段被发现。本研究的目的是提供新颖的深度学习算法,通过使用图像来针对六种形式的指甲疾病进行自主分类:蓝指、棒状、点状、甲癣、肢端黄斑性黑色素瘤和正常指甲或健康指甲外观。在此基础上,我们建立了一个初始基线CNN模型,然后通过引入Hybrid Capsule CNN模型来进一步推进该模型,减少经典CNN模型的空间层次缺陷。所有这些模型都使用指甲疾病检测数据集进行训练和测试,并大量使用数据增强技术。因此,与其他模型相比,Hybrid Capsule CNN模型提供了更高的分类精度;训练准确率为99.40%,验证准确率为99.25%,而混合模型的准确率为97.35%,召回率为96.79%,优于Base CNN模型。混合模型还利用了胶囊网络和动态路由,提高了对转换的鲁棒性,并改善了空间特性。因此,目前的研究提供了一种非常可行、经济和方便的诊断工具,特别是对于医疗服务缺乏的地方。所提出的方法为早期诊断提供了巨大的能力,并为医疗保健方案中的患者提供了更好的结果。临床试验编号不适用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous detection of nail disorders using a hybrid capsule CNN: a novel deep learning approach for early diagnosis.

Major underlying health issues can be indicated by even minor nail infections. Subungual Melanoma is one of the most severe kinds since it is identified at a much later stage than other conditions. The purpose of this research is to offer novel deep-learning algorithms that target the autonomous categorization of six forms of nail disorders by employing images: Blue Finger, Clubbing, Pitting, Onychogryphosis, Acral Lentiginous Melanoma, and Normal Nail or Healthy Nail Appearance. Based on this, we build an initial baseline CNN model, which is then further advanced by the introduction of the Hybrid Capsule CNN model by the reduction of space hierarchy deficiencies of the classic CNN model. All these models were trained and tested using the Nail Disease Detection dataset with intensive uses of techniques of data augmentation. The Hybrid Capsule CNN model, thus, provided superior classification accuracy compared to the others; the training accuracy was 99.40%, while the validation accuracy was 99.25%, whereas the hybrid model outperformed the Base CNN model with astounding precision, recall of 97.35% and 96.79%. The hybrid model additionally leverages the capsule network and dynamic routing, offering improved robustness against transformations as well as improving spatial properties. The current study consequently provides a very viable, economical, and accessible diagnostic tool, especially for places with a paucity of medical services. The proposed methodology provides tremendous capacity for early diagnosis and better outcomes for the patient in a healthcare scenario. Clinical trial number Not applicable.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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