使用椭圆拟合、自动编码和数据增强的红细胞标记混合框架。

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Bundasak Angmanee, Surasak Wanram, Amorn Thedsakhulwong
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引用次数: 0

摘要

本研究旨在从泰国确诊的贫血和地中海贫血病例中建立异常红细胞形态的本地数据集,为医学图像分析和未来的人工智能辅助诊断提供基础。在2025年4月至5月期间收集了6种血液系统疾病的血液涂片样本,将12个感兴趣的区域分割成大约34,000个单细胞图像。为了表征细胞的可变性,使用卷积自编码器提取潜在特征,而椭圆拟合用于量化细胞的几何形状。专家血液学家验证代表性聚类以确保临床准确性,并采用数据增强来解决类不平衡和扩展罕见的形态学类型。从数据集中,14089张高质量的单细胞图像被用于将RBC形态学分为36个有临床意义的类别。与现有依赖于有限或精心整理的样本的数据集不同,该数据集反映了与东南亚相关的种群特异性特征和形态多样性。结果表明,将计算方法与专家知识相结合,建立可扩展和可解释的数据集是可行的。提议的数据集可作为推进血液学研究的强大资源,并有助于将传统诊断与人工智能驱动的临床支持系统连接起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Framework for Red Blood Cell Labeling Using Elliptical Fitting, Autoencoding, and Data Augmentation.

This study aimed to develop a local dataset of abnormal RBC morphology from confirmed cases of anemia and thalassemia in Thailand, providing a foundation for medical image analysis and future AI-assisted diagnostics. Blood smear samples from six hematological disorders were collected between April and May 2025, with twelve regions of interest segmented into approximately 34,000 single-cell images. To characterize cell variability, a convolutional autoencoder was applied to extract latent features, while ellipse fitting was used to quantify cell geometry. Expert hematologists validated representative clusters to ensure clinical accuracy, and data augmentation was employed to address class imbalance and expand rare morphological types. From the dataset, 14,089 high-quality single-cell images were used to classify RBC morphology into 36 clinically meaningful categories. Unlike existing datasets that rely on limited or curated samples, this dataset reflects population-specific characteristics and morphological diversity relevant to Southeast Asia. The results demonstrate the feasibility of establishing scalable and interpretable datasets that integrate computational methods with expert knowledge. The proposed dataset serves as a robust resource for advancing hematology research and contributes to bridging traditional diagnostics with AI-driven clinical support systems.

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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
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