| Literature DB >> 30321758 |
Geon Kim1, YoungJu Jo2, Hyungjoo Cho3, Hyun-Seok Min3, YongKeun Park4.
Abstract
We present a rapid and label-free method for hematologic screening for diseases and syndromes, utilizing quantitative phase imaging (QPI) and machine learning. We aim to establish an efficient blood examination framework that does not suffer from the drawbacks of conventional blood assays, which are incapable of profiling single cells or require labeling procedures. Our method involves the synergistic employment of QPI and machine learning. The high-dimensional refractive index information arising from the QPI-based profiling of single red blood cells is processed to screen for diseases and syndromes using machine learning, which can utilize high-dimensional data beyond the human level. Accurate screening for iron-deficiency anemia, reticulocytosis, hereditary spherocytosis, and diabetes mellitus is demonstrated (>98% accuracy) using the proposed method. Furthermore, we highlight the synergy between QPI and machine learning in the proposed method by analyzing the performance of the method.Entities:
Keywords: Hematologic disorders; Holography; Machine learning; Quantitative phase imaging; Red blood cells; Three-dimensional microscopy
Mesh:
Year: 2018 PMID: 30321758 DOI: 10.1016/j.bios.2018.09.068
Source DB: PubMed Journal: Biosens Bioelectron ISSN: 0956-5663 Impact factor: 10.618