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Deep learning-based light scattering microfluidic cytometry for label-free acute lymphocytic leukemia classification

机译:基于深度学习的光散射微流体细胞术用于无标记的急性淋巴细胞白血病分类

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摘要

The subtyping of Acute lymphocytic leukemia (ALL) is important for proper treatment strategies and prognosis. Conventional methods for manual blood and bone marrow testing are time-consuming and labor-intensive, while recent flow cytometric immunophenotyping has the limitations such as high cost. Here we develop the deep learning-based light scattering imaging flow cytometry for label-free classification of ALL. The single ALL cells confined in three dimensional (3D) hydrodynamically focused stream are excited by light sheet. Our label-free microfluidic cytometry obtains big-data two dimensional (2D) light scattering patterns from single ALL cells of B/T subtypes. A deep learning framework named Inception V3-SIFT (Scale invariant feature transform)-Scattering Net (ISSC-Net) is developed, which can perform high-precision classification of T-ALL and B-ALL cell line cells with an accuracy of 0.993 ± 0.003. Our deep learning-based 2D light scattering flow cytometry is promising for automatic and accurate subtyping of un-stained ALL.
机译:急性淋巴细胞白血病(全部)的亚型对于适当的治疗策略和预后是重要的。用于手动血液和骨髓检测的常规方法是耗时和劳动密集型,而最近的流式细胞术免疫蛋白酶型具有诸如高成本的限制。在这里,我们开发基于深度学习的光散射成像流量仪,用于所有的无标签分类。单个局限于三维(3D)流体动力学聚焦物流的单个细胞被光片激发。我们的无标记的微流体细胞仪从B / T亚型的单个细胞中获得大数据二维(2D)光散射图案。开发了一个名为v3-sift(Scale Funiant Feature变换)-散射网(ISSC-Net)的深度学习框架,这可以对T-all和B-所有细胞系电池进行高精度分类,精度为0.993± 0.003。我们深入的基于学习的2D光散射流式细胞仪是有前途的,用于自动和准确的未染色的亚型。

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