Framework for psoriasis/molluscum detection in skin images using ResNetV2 variants

IF 1.7 4区 综合性期刊 Q2 MULTIDISCIPLINARY SCIENCES Journal of Radiation Research and Applied Sciences Pub Date : 2024-08-02 DOI:10.1016/j.jrras.2024.101052
Hong-Xia Pan , Junfang Zhang , Chia-Hui Lin , Rui Feng , Yi Zhan
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Abstract

Background

Computer algorithms are extensively utilized in hospitals for the purpose of achieving expedited and precise disease identification from medical data. The objective of this study is to propose a deep-learning (DL) framework to classify the chosen digital skin image (DSI) database into psoriasis and molluscum with better accuracy.

Aims and objectives

Aims to develop a DL-tool using the pre-trained ResNetV2 DL-models and verify the performance of the developed tool using a chosen DSI database. Further, confirm the merit of the ResNetV2-based tool against other chosen DL-models.

Methods and results

This study initially examines the performance of chosen pre-trained DL (PDL) methods using the DSI database using conventional and fused features. Proposed DL-tool consist the following stages; (i) image collection and resizing it 224x224x3 pixels, (ii) deep-features extraction using the selected PDL, (iii) feature reduction and serial features concatenation to get a new features vector, and (iv) the performance evaluation through three-fold cross validation and confirmation. The feature reduction and serial features fusion of this study is performed initially using feature sorting based on its rank and 50% dropout and Particle Swarm Optimization (PSO) based feature reduction. The reduced features of two chosen PDL-models are then considered to obtain the Fused Deep Features (FDF) and the classification task is executed on the DSI data to verify the performance of the developed DL-tool. The experimental outcome of this study confirms that the proposed scheme helps to provide a detection accuracy of >97%, when the K-Nearest Neighbour based classification is executed.

Conclusion

Investigational outcome of this study confirms that the proposed DL-tool helps to achieve better detection accuracy when the features of ResNetV2 models are considered to generate the FDF. Further, the accuracy achieved with the PSO based FDF is better compared to the conventional method generated FDF.

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使用 ResNetV2 变体检测皮肤图像中牛皮癣/软疣的框架
医院广泛使用计算机算法,以便从医疗数据中快速、准确地识别疾病。本研究的目的是提出一种深度学习(DL)框架,将所选的数字皮肤图像(DSI)数据库更准确地分为银屑病和软疣。目的是使用预训练的 ResNetV2 DL 模型开发一个 DL 工具,并使用选定的 DSI 数据库验证所开发工具的性能。此外,确认基于 ResNetV2 的工具与其他选定 DL 模型的优劣。本研究利用 DSI 数据库,使用传统特征和融合特征,初步检验了所选的预训练 DL (PDL) 方法的性能。拟议的 DL 工具包括以下几个阶段:(i) 收集图像并将其大小调整为 224x224x3 像素;(ii) 使用选定的 PDL 提取深度特征;(iii) 缩减特征并串联特征以获得新的特征向量;(iv) 通过三倍交叉验证和确认进行性能评估。本研究中的特征缩减和序列特征融合首先使用基于等级和 50%剔除率的特征排序,以及基于粒子群优化(PSO)的特征缩减。然后,考虑两个所选 PDL 模型的缩减特征,得到融合深度特征(FDF),并在 DSI 数据上执行分类任务,以验证所开发 DL 工具的性能。本研究的实验结果证实,在执行基于 K-近邻的分类时,所提出的方案有助于提供大于 97% 的检测准确率。本研究的调查结果表明,当考虑 ResNetV2 模型的特征来生成 FDF 时,所提出的 DL 工具有助于实现更高的检测准确率。此外,与传统方法生成的 FDF 相比,基于 PSO 的 FDF 所达到的准确率更高。
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来源期刊
自引率
5.90%
发文量
130
审稿时长
16 weeks
期刊介绍: Journal of Radiation Research and Applied Sciences provides a high quality medium for the publication of substantial, original and scientific and technological papers on the development and applications of nuclear, radiation and isotopes in biology, medicine, drugs, biochemistry, microbiology, agriculture, entomology, food technology, chemistry, physics, solid states, engineering, environmental and applied sciences.
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