4.7 Article

Fully automated platelet differential interference contrast image analysis via deep learning

Journal

SCIENTIFIC REPORTS
Volume 12, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41598-022-08613-2

Keywords

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Funding

  1. British Heart Foundation/NC3Rs Grant [NC/S001441/1]
  2. University of Reading Undergraduate Research Opportunities Programme (UROP) scheme
  3. British Heart Foundation [PG/17/76/33082]
  4. British Heart Foundation programme Grant [PG/17/76/33082, RG/20/7/34866]
  5. European Union [766118]

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This study utilized a convolutional neural network (CNN) to automatically analyze platelet spreading assays captured by differential interference contrast (DIC) microscopy. Compared to manual analysis, the CNN provided more accurate evaluations of platelet morphology, minimizing biases and variations associated with manual annotation.
Platelets mediate arterial thrombosis, a leading cause of myocardial infarction and stroke. During injury, platelets adhere and spread over exposed subendothelial matrix substrates of the damaged blood vessel wall. The mechanisms which govern platelet activation and their interaction with a range of substrates are therefore regularly investigated using platelet spreading assays. These assays often use differential interference contrast (DIC) microscopy to assess platelet morphology and analysis performed using manual annotation. Here, a convolutional neural network (CNN) allowed fully automated analysis of platelet spreading assays captured by DIC microscopy. The CNN was trained using 120 generalised training images. Increasing the number of training images increases the mean average precision of the CNN. The CNN performance was compared to six manual annotators. Significant variation was observed between annotators, highlighting bias when manual analysis is performed. The CNN effectively analysed platelet morphology when platelets spread over a range of substrates (CRP-XL, vWF and fibrinogen), in the presence and absence of inhibitors (dasatinib, ibrutinib and PRT-060318) and agonist (thrombin), with results consistent in quantifying spread platelet area which is comparable to published literature. The application of a CNN enables, for the first time, automated analysis of platelet spreading assays captured by DIC microscopy.

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