Cell morphology-based machine learning models for human cell state classification

被引:0
作者
Yi Li
Chance M. Nowak
Uyen Pham
Khai Nguyen
Leonidas Bleris
机构
[1] University of Texas at Dallas,Bioengineering Department
[2] University of Texas at Dallas,Center for Systems Biology
[3] University of Texas at Dallas,Department of Biological Sciences
来源
npj Systems Biology and Applications | / 7卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Herein, we implement and access machine learning architectures to ascertain models that differentiate healthy from apoptotic cells using exclusively forward (FSC) and side (SSC) scatter flow cytometry information. To generate training data, colorectal cancer HCT116 cells were subjected to miR-34a treatment and then classified using a conventional Annexin V/propidium iodide (PI)-staining assay. The apoptotic cells were defined as Annexin V-positive cells, which include early and late apoptotic cells, necrotic cells, as well as other dying or dead cells. In addition to fluorescent signal, we collected cell size and granularity information from the FSC and SSC parameters. Both parameters are subdivided into area, height, and width, thus providing a total of six numerical features that informed and trained our models. A collection of logistical regression, random forest, k-nearest neighbor, multilayer perceptron, and support vector machine was trained and tested for classification performance in predicting cell states using only the six aforementioned numerical features. Out of 1046 candidate models, a multilayer perceptron was chosen with 0.91 live precision, 0.93 live recall, 0.92 live f value and 0.97 live area under the ROC curve when applied on standardized data. We discuss and highlight differences in classifier performance and compare the results to the standard practice of forward and side scatter gating, typically performed to select cells based on size and/or complexity. We demonstrate that our model, a ready-to-use module for any flow cytometry-based analysis, can provide automated, reliable, and stain-free classification of healthy and apoptotic cells using exclusively size and granularity information.
引用
收藏
相关论文
共 86 条
[1]  
Li Y(2012)Transcription activator-like effector hybrids for conditional control and rewiring of chromosomal transgene expression Sci. Rep. 2 1-7
[2]  
Moore R(2018)CRISPR-based editing reveals edge-specific effects in biological Netw. Cris. J. 1 286-293
[3]  
Guinn M(2019)Flow cytometry contributions for the diagnosis and immunopathological characterization of primary immunodeficiency diseases with immune dysregulation Front. Immunol. 10 2742-12898
[4]  
Bleris L(2015)Discriminating direct and indirect connectivities in biological networks Proc. Natl Acad. Sci. USA 112 12893-633
[5]  
Li Y(2014)Biological 2-input decoder circuit in human cells ACS Synth. Biol. 3 627-47
[6]  
Nowak CM(2015)Role of flippases, scramblases and transfer proteins in phosphatidylserine subcellular distribution Traffic 16 35-650
[7]  
Withers D(2015)An apoptotic ‘Eat Me’ signal: phosphatidylserine exposure Trends Cell Biol. 25 639-396
[8]  
Pertsemlidis A(2019)Artificial intelligence, machine learning, computer-aided diagnosis, and radiomics: advances in imaging towards to precision medicine Radiol. Bras. 52 387-520
[9]  
Bleris L(2018)Machine learning in medical imaging J. Am. Coll. Radiol. 15 512-4621
[10]  
Cabral-Marques O(2014)Using high-throughput transcriptomic data for prognosis: a critical overview and perspectives Cancer Res. 74 4612-879