Joint Image Processing with Learning-Driven Data Representation and Model Behavior for Non-Intrusive Anemia Diagnosis in Pediatric Patients.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-10-02 DOI:10.3390/jimaging10100245
Tarek Berghout
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Abstract

Anemia diagnosis is crucial for pediatric patients due to its impact on growth and development. Traditional methods, like blood tests, are effective but pose challenges, such as discomfort, infection risk, and frequent monitoring difficulties, underscoring the need for non-intrusive diagnostic methods. In light of this, this study proposes a novel method that combines image processing with learning-driven data representation and model behavior for non-intrusive anemia diagnosis in pediatric patients. The contributions of this study are threefold. First, it uses an image-processing pipeline to extract 181 features from 13 categories, with a feature-selection process identifying the most crucial data for learning. Second, a deep multilayered network based on long short-term memory (LSTM) is utilized to train a model for classifying images into anemic and non-anemic cases, where hyperparameters are optimized using Bayesian approaches. Third, the trained LSTM model is integrated as a layer into a learning model developed based on recurrent expansion rules, forming a part of a new deep network called a recurrent expansion network (RexNet). RexNet is designed to learn data representations akin to traditional deep-learning methods while also understanding the interaction between dependent and independent variables. The proposed approach is applied to three public datasets, namely conjunctival eye images, palmar images, and fingernail images of children aged up to 6 years. RexNet achieves an overall evaluation of 99.83 ± 0.02% across all classification metrics, demonstrating significant improvements in diagnostic results and generalization compared to LSTM networks and existing methods. This highlights RexNet's potential as a promising alternative to traditional blood-based methods for non-intrusive anemia diagnosis.

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利用学习驱动的数据表示和模型行为进行联合图像处理,实现对儿科患者贫血症的非侵入式诊断。
贫血会影响儿童的生长发育,因此诊断贫血对儿童患者至关重要。血液化验等传统方法虽然有效,但存在不适感、感染风险和频繁监测困难等挑战,因此需要非侵入性诊断方法。有鉴于此,本研究提出了一种将图像处理与学习驱动的数据表示和模型行为相结合的新方法,用于对儿科患者进行非侵入性贫血诊断。本研究有三方面的贡献。首先,它使用图像处理管道从 13 个类别中提取了 181 个特征,并通过特征选择过程确定了最关键的学习数据。其次,利用基于长短期记忆(LSTM)的深度多层网络训练模型,将图像分为贫血和非贫血病例,并使用贝叶斯方法优化超参数。第三,将训练好的 LSTM 模型作为一个层集成到基于递归扩展规则开发的学习模型中,形成新的深度网络(称为递归扩展网络(RexNet))的一部分。RexNet 旨在学习与传统深度学习方法类似的数据表示,同时还能理解因变量和自变量之间的相互作用。所提出的方法被应用于三个公共数据集,即结膜眼图像、手掌图像和 6 岁以下儿童的指甲图像。与 LSTM 网络和现有方法相比,RexNet 在诊断结果和泛化方面都有显著改善。这凸显了 RexNet 在非侵入式贫血诊断中替代传统血液诊断方法的潜力。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
期刊最新文献
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