Thalassemia Diagnosis Through Medical Imaging: A New Artificial Intelligence-Based Framework

A. Zaylaa, Mohammad Makki, Rola Kassem
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引用次数: 3

Abstract

Thalassemia is the most common single-gene disorder throughout the world and represents a major public health problem resulting in abnormal ratios of hemoglobin subunits. It is widely spread throughout the Mediterranean region, Middle East, Southeast Asia, and some parts of Africa. There are different types of Thalassemia characterized by abnormal hemoglobin production. Most of the current hemoglobinopathy screening methods include High Performance Liquid Chromatography (HPLC), hemoglobin electrophoresis, screening of Polymerase Chain Reaction (PCR) mutations, and Deoxyribonucleic Acid (DNA) tests. However, all these methods are costly and require specialized instrumentation and trained technicians. Despite some studies used Artificial Intelligence (AI) they focused merely on Machine Learning (ML) and results were not optimal. This study aims to design a new AI-based framework for Thalassemia diagnosis using Deep Learning (DL) and a new combination of metrics for evaluation. This was achieved through the development and evaluation of a supervised semantic image segmentation model, and the implementation of different data engineering methods such as data annotation, augmentation, pre-processing, and preparation. Transfer learning was utilized and the Prediction Time Augmentation (PTA) was employed to get smoother and more accurate predictions. Quantitative results showed that, the mean Intersection Over Union (IoU) score of prediction of Thalassemia was 88% with PTA and 82% without PTA. Results also showed that as the combined metric of loss scores decreases the prediction of Thalassemia increases. Qualitative results showed that the final prediction of Thalassemia focuses on the Codocytes and labels the other unidentified cells as the background. Also, the resulting image was smoother and less bulky than the original annotated ground truth, and thus could be feasibly diagnosed. As a future prospect we aim to implement more algorithms and extend the diagnosis to include other diseases.
通过医学影像诊断地中海贫血:一个新的基于人工智能的框架
地中海贫血是世界上最常见的单基因疾病,是一个主要的公共卫生问题,导致血红蛋白亚基比例异常。它广泛分布在地中海地区、中东、东南亚和非洲的一些地区。地中海贫血有不同类型,其特征是血红蛋白产生异常。目前大多数血红蛋白病的筛查方法包括高效液相色谱(HPLC)、血红蛋白电泳、聚合酶链反应(PCR)突变筛选和脱氧核糖核酸(DNA)检测。然而,所有这些方法都是昂贵的,需要专门的仪器和训练有素的技术人员。尽管一些研究使用了人工智能(AI),但它们只关注机器学习(ML),结果并不理想。本研究旨在利用深度学习(DL)和评估指标的新组合设计一个新的基于人工智能的地中海贫血诊断框架。这是通过开发和评估监督语义图像分割模型,以及实现不同的数据工程方法(如数据注释、增强、预处理和准备)来实现的。利用迁移学习和预测时间增强法(PTA)进行预测,使预测更平滑、更准确。定量结果显示,使用PTA预测地中海贫血的平均IoU评分为88%,不使用PTA预测地中海贫血的平均IoU评分为82%。结果还表明,随着损失评分的综合指标降低,对地中海贫血的预测增加。定性结果表明,地中海贫血的最终预测集中在卵母细胞上,并将其他未识别的细胞标记为背景。与原始标注的ground truth相比,得到的图像更平滑,体积更小,因此可以进行诊断。作为未来的展望,我们的目标是实现更多的算法,并将诊断扩展到包括其他疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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