A low-cost platform for automated cervical cytology: addressing health and socioeconomic challenges in low-resource settings.

IF 3.8 Q3 ENGINEERING, BIOMEDICAL
Frontiers in medical technology Pub Date : 2025-03-31 eCollection Date: 2025-01-01 DOI:10.3389/fmedt.2025.1531817
José Ocampo-López-Escalera, Héctor Ochoa-Díaz-López, Xariss M Sánchez-Chino, César A Irecta-Nájera, Saúl D Tobar-Alas, Martha Rosete-Aguilar
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引用次数: 0

Abstract

Introduction: Cervical cancer remains a significant health challenge around the globe, with particularly high prevalence in low- and middle-income countries. This disease is preventable and curable if detected in early stages, making regular screening critically important. Cervical cytology, the most widely used screening method, has proven highly effective in reducing cervical cancer incidence and mortality in high income countries. However, its effectiveness in low-resource settings has been limited, among other factors, by insufficient diagnostic infrastructure and a shortage of trained healthcare personnel.

Methods: This paper introduces the development of a low-cost microscopy platform designed to address these limitations by enabling automatic reading of cervical cytology slides. The system features a robotized microscope capable of slide scanning, autofocus, and digital image capture, while supporting the integration of artificial intelligence (AI) algorithms. All at a production cost below 500 USD. A dataset of nearly 2,000 images, captured with the custom-built microscope and covering seven distinct cervical cellular types relevant in cytologic analysis, was created. This dataset was then used to fine-tune and test several pre-trained models for classifying between images containing normal and abnormal cell subtypes.

Results: Most of the tested models showed good performance for properly classifying images containing abnormal and normal cervical cells, with sensitivities above 90%. Among these models, MobileNet demonstrated the highest accuracy in detecting abnormal cell types, achieving sensitivities of 98.26% and 97.95%, specificities of 88.91% and 88.72%, and F-scores of 96.42% and 96.23% on the validation and test sets, respectively.

Conclusions: The results indicate that MobileNet might be a suitable model for real-world deployment on the low-cost platform, offering high precision and efficiency in classifying cervical cytology images. This system presents a first step towards a promising solution for improving cervical cancer screening in low-resource settings.

低成本宫颈细胞学自动化平台:解决低资源环境下的健康和社会经济挑战。
引言:子宫颈癌在全球仍然是一个重大的健康挑战,在低收入和中等收入国家发病率特别高。如果在早期发现,这种疾病是可以预防和治愈的,因此定期筛查至关重要。事实证明,在高收入国家,使用最广泛的筛查方法宫颈细胞学检查在降低宫颈癌发病率和死亡率方面非常有效。然而,除其他因素外,由于诊断基础设施不足和训练有素的保健人员短缺,其在资源匮乏环境中的有效性受到限制。方法:本文介绍了一种低成本显微镜平台的开发,旨在通过实现宫颈细胞学切片的自动读取来解决这些限制。该系统具有一个机器人显微镜,能够扫描幻灯片,自动对焦和数字图像捕获,同时支持人工智能(AI)算法的集成。所有的生产成本都低于500美元。使用定制的显微镜捕获的近2000张图像的数据集涵盖了细胞学分析中相关的七种不同的宫颈细胞类型。然后使用该数据集微调和测试几个预训练模型,用于在包含正常和异常细胞亚型的图像之间进行分类。结果:大多数模型对正常和异常宫颈细胞图像的分类效果良好,灵敏度均在90%以上。其中,MobileNet在检测异常细胞类型方面的准确率最高,在验证集和测试集上的灵敏度分别为98.26%和97.95%,特异性分别为88.91%和88.72%,f分数分别为96.42%和96.23%。结论:MobileNet在低成本平台上可能是一个适合实际部署的模型,对宫颈细胞学图像分类具有较高的精度和效率。该系统为改善低资源环境下的宫颈癌筛查提供了一个有希望的解决方案。
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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来源期刊
CiteScore
3.70
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0.00%
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审稿时长
13 weeks
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