Objective assessment of stored blood quality by deep learning.
Minh DoanJoseph A SebastianJuan C CaicedoStefanie SiegertAline RochTracey R TurnerOlga MykhailovaRuben N PintoClaire McQuinAllen GoodmanMichael J ParsonsOlaf WolkenhauerHolger HennigShantanu SinghAnne WilsonJason P AckerPaul ReesMichael C KoliosAnne E CarpenterPublished in: Proceedings of the National Academy of Sciences of the United States of America (2020)
Stored red blood cells (RBCs) are needed for life-saving blood transfusions, but they undergo continuous degradation. RBC storage lesions are often assessed by microscopic examination or biochemical and biophysical assays, which are complex, time-consuming, and destructive to fragile cells. Here we demonstrate the use of label-free imaging flow cytometry and deep learning to characterize RBC lesions. Using brightfield images, a trained neural network achieved 76.7% agreement with experts in classifying seven clinically relevant RBC morphologies associated with storage lesions, comparable to 82.5% agreement between different experts. Given that human observation and classification may not optimally discern RBC quality, we went further and eliminated subjective human annotation in the training step by training a weakly supervised neural network using only storage duration times. The feature space extracted by this network revealed a chronological progression of morphological changes that better predicted blood quality, as measured by physiological hemolytic assay readouts, than the conventional expert-assessed morphology classification system. With further training and clinical testing across multiple sites, protocols, and instruments, deep learning and label-free imaging flow cytometry might be used to routinely and objectively assess RBC storage lesions. This would automate a complex protocol, minimize laboratory sample handling and preparation, and reduce the impact of procedural errors and discrepancies between facilities and blood donors. The chronology-based machine-learning approach may also improve upon humans' assessment of morphological changes in other biomedically important progressions, such as differentiation and metastasis.
Keyphrases
- deep learning
- red blood cell
- flow cytometry
- neural network
- label free
- machine learning
- artificial intelligence
- convolutional neural network
- endothelial cells
- high resolution
- high throughput
- induced pluripotent stem cells
- pluripotent stem cells
- randomized controlled trial
- virtual reality
- physical activity
- room temperature
- big data
- quality improvement
- patient safety
- emergency department
- cell proliferation
- signaling pathway
- body composition
- cell cycle arrest
- mass spectrometry