A deep learning workflow for quantification of micronuclei in DNA damage studies in cultured cancer cell lines: A proof of principle investigation

The cytokinesis block micronucleus assay is widely used for measuring/scoring/counting micronuclei, a marker of genome instability in cultured and primary cells. Though a gold standard method, this is a laborious and time-consuming process with person-to-person variation observed in quantification o...

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Veröffentlicht in:Computer methods and programs in biomedicine 2023-04, Vol.232, p.107447-107447, Article 107447
Hauptverfasser: Panchbhai, Anand, Savash Ishanzadeh, Munuse C, Sidali, Ahmed, Solaiman, Nadeen, Pankanti, Smarana, Kanagaraj, Radhakrishnan, Murphy, John J, Surendranath, Kalpana
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Sprache:eng
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Zusammenfassung:The cytokinesis block micronucleus assay is widely used for measuring/scoring/counting micronuclei, a marker of genome instability in cultured and primary cells. Though a gold standard method, this is a laborious and time-consuming process with person-to-person variation observed in quantification of micronuclei. We report in this study the utilisation of a new deep learning workflow for detection of micronuclei in DAPI stained nuclear images. The proposed deep learning framework achieved an average precision of >90% in detection of micronuclei. This proof of principle investigation in a DNA damage studies laboratory supports the idea of deploying AI powered tools in a cost-effective manner for repetitive and laborious tasks with relevant computational expertise. These systems will also help improving the quality of data and wellbeing of researchers.
ISSN:0169-2607
1872-7565
DOI:10.1016/j.cmpb.2023.107447