Machine Learning Enables Live Label-Free Phenotypic Screening in Three Dimensions.
Author | |
---|---|
Abstract |
:
There is a large amount of information in brightfield images that was previously inaccessible by using traditional microscopy techniques. This information can now be exploited by using machine-learning approaches for both image segmentation and the classification of objects. We have combined these approaches with a label-free assay for growth and differentiation of leukemic colonies, to generate a novel platform for phenotypic drug discovery. Initially, a supervised machine-learning algorithm was used to identify in-focus colonies growing in a three-dimensional (3D) methylcellulose gel. Once identified, unsupervised clustering and principle component analysis of texture-based phenotypic profiles were applied to group similar phenotypes. In a proof-of-concept study, we successfully identified a novel phenotype induced by a compound that is currently in clinical trials for the treatment of leukemia. We believe that our platform will be of great benefit for the utilization of patient-derived 3D cell culture systems for both drug discovery and diagnostic applications. |
Year of Publication |
:
2018
|
Journal |
:
Assay and drug development technologies
|
Volume |
:
16
|
Issue |
:
1
|
Number of Pages |
:
51-63
|
ISSN Number |
:
1540-658X
|
URL |
:
http://dx.doi.org/10.1089/adt.2017.819
|
DOI |
:
10.1089/adt.2017.819
|
Short Title |
:
Assay Drug Dev Technol
|
Download citation |