TY - JOUR T1 - Multi-ATOM: Ultrahigh-throughput single-cell quantitative phase imaging with subcellular resolution JF - bioRxiv DO - 10.1101/510693 SP - 510693 AU - Kelvin C. M. Lee AU - Andy K. S. Lau AU - Anson H. L. Tang AU - Maolin Wang AU - Aaron T. Y. Mok AU - Bob M. F. Chung AU - Wenwei Yan AU - Ho Cheung Shum AU - Kathryn S. E. Cheah AU - Godfrey C. F. Chan AU - Hayden K. H. So AU - Kenneth K. Y. Wong AU - Kevin K. Tsia Y1 - 2019/01/01 UR - http://biorxiv.org/content/early/2019/01/03/510693.abstract N2 - A growing body of evidence has substantiated the significance of quantitative phase imaging (QPI) in enabling cost-effective and label-free cellular assay, which provides useful insights into understanding biophysical properties of cells and their roles in cellular functions. However, available QPI modalities are limited by the loss of imaging resolution at high throughput and thus run short of sufficient statistical power at the single cell precision to define cell identities in a large and heterogeneous population of cells – hindering their utility in mainstream biomedicine and biology. Here we present a new QPI modality, coined multi-ATOM that captures and processes quantitative label-free single-cell images at ultra-high throughput without compromising sub-cellular resolution. We show that multi-ATOM, based upon ultrafast phase-gradient encoding, outperforms state-of-the-art QPI in permitting robust phase retrieval at a QPI throughput of >10,000 cell/sec, bypassing the need for interferometry which inevitably compromises QPI quality under ultrafast operation. We employ multi-ATOM for large-scale, label-free, multi-variate, cell-type classification (e.g. breast cancer sub-types, and leukemic cells versus peripheral blood mononuclear cells) at high accuracy (>94%). Our results suggest that multi-ATOM could empower new strategies in large-scale biophysical single-cell analysis with applications in biology and enriching disease diagnostics. ER -