Aims: Morphological differentiation among different blast cell lineages is a difficult task and there is a lack of automated analysers able to recognise these abnormal cells. This study aims to develop a machine learning approach to predict the diagnosis of acute leukaemia using peripheral blood (PB) images.

Methods: A set of 442 smears was analysed from 206 patients. It was split into a with 75% of these smears and a with the remaining 25%. Colour clustering and mathematical morphology were used to segment cell images, which allowed the extraction of 2,867 geometric, colour and texture features. Several classification techniques were studied to obtain the most accurate classification method. Afterwards, the classifier was assessed with the images of the . The final strategy was to predict the patient's diagnosis using the PB smear, and the final assessment was done with the cell images of the smears of the .

Results: The highest classification accuracy was achieved with the selection of 700 features with linear discriminant analysis. The overall classification accuracy for the six groups of cell types was 85.8%, while the overall classification accuracy for individual smears was 94% as compared with the true confirmed diagnosis.

Conclusions: The proposed method achieves a high diagnostic precision in the recognition of different types of blast cells among other mononuclear cells circulating in blood. It is the first encouraging step towards the idea of being a diagnostic support tool in the future.

Download full-text PDF

Source
http://dx.doi.org/10.1136/jclinpath-2019-205949DOI Listing

Publication Analysis

Top Keywords

classification accuracy
12
recognition types
8
acute leukaemia
8
leukaemia peripheral
8
peripheral blood
8
cell images
8
classification
5
automatic recognition
4
types acute
4
blood image
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!