Realtime bacteria detection and analysis in sterile liquid products using deep learning holographic imaging

Nicholas Bravo-Frank, Rushikesh Zende, Lei Feng, Nicolas Mesyngier, Aditya Pachpute, Jiarong Hong
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Abstract

We introduce a digital inline holography (DIH) method combined with deep learning (DL) for real-time detection and analysis of bacteria in liquid suspension. Specifically, we designed a prototype that integrates DIH with fluorescence imaging to efficiently capture holograms of bacteria flowing in a microfluidic channel, utilizing the fluorescent signal to manually identify ground truths for validation. We process holograms using a tailored DL framework that includes preprocessing, detection, and classification stages involving three specific DL models trained on an extensive dataset that included holograms of generic particles present in sterile liquid and five bacterial species featuring distinct morphologies, Gram stain attributes, and viability. Our approach, validated through experiments with synthetic data and sterile liquid spiked with different bacteria, accurately distinguishes between bacteria and particles, live and dead bacteria, and Gram-positive and negative bacteria of similar morphology, all while minimizing false positives. The study highlights the potential of combining DIH with DL as a transformative tool for rapid bacterial analysis in clinical and industrial settings, with potential extension to other applications including pharmaceutical screening, environmental monitoring, and disease diagnostics.

Abstract Image

利用深度学习全息成像技术实时检测和分析无菌液体产品中的细菌
我们介绍了一种结合深度学习(DL)的数字在线全息(DIH)方法,用于实时检测和分析液体悬浮液中的细菌。具体来说,我们设计了一种原型,将 DIH 与荧光成像集成在一起,高效捕捉微流控通道中流动的细菌全息图,利用荧光信号手动识别地面真相进行验证。我们使用定制的 DL 框架处理全息图,该框架包括预处理、检测和分类阶段,涉及在广泛数据集上训练的三个特定 DL 模型,这些数据集包括无菌液体中一般颗粒的全息图,以及具有不同形态、革兰氏染色属性和活力的五种细菌的全息图。通过对合成数据和添加了不同细菌的无菌液体进行实验验证,我们的方法能准确区分细菌和颗粒、活菌和死菌以及形态相似的革兰氏阳性和阴性细菌,同时最大限度地减少误报。这项研究强调了将 DIH 与 DL 结合起来作为临床和工业环境中快速细菌分析的变革性工具的潜力,并有可能扩展到其他应用领域,包括药物筛选、环境监测和疾病诊断。
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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