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Quantitative phase microscopy spatial signatures of cancer cells
Darina Roitshtain
, Lauren Wolbromsky
, Evgeny Bal
, Hayit Greenspan
, Lisa L. Satterwhite
, Natan T. Shaked
Tel Aviv University
Duke University
Research output
:
Contribution to journal
›
Article
›
peer-review
116
Scopus citations
Overview
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Keyphrases
Cancer Cells
100%
Quantitative Phase Microscopy
100%
Spatial Signature
100%
Liquid Biopsy
66%
Primary Tumor Cells
66%
Healthy Cells
66%
Imaging Approach
33%
Optical Path
33%
Quantitative Phase Imaging
33%
Flow Cytometry
33%
Machine Learning Algorithms
33%
Statistical Significance
33%
Metastatic Cells
33%
Low Coherence
33%
3D Morphology
33%
Multiple Exposures
33%
Imaging Flow Cytometer
33%
Acquisition Mode
33%
Quantitative Imaging
33%
Morphological Data
33%
Dynamic Cells
33%
Path Delay
33%
Tumor Biopsy
33%
Quantitative Phase Image
33%
Label-free Quantification
33%
Phase Mapping
33%
Interferometric Phase Microscopy
33%
3D Texture
33%
Delay Map
33%
Textural Information
33%
Cell Tumor
33%
Liquid Chromatography Analysis
33%
Tumor-normal
33%
Medicine and Dentistry
Cancer Cell
100%
Tumor Cell
66%
Metastatic Carcinoma
66%
Primary Tumor
66%
Liquid Biopsy
66%
Morphology
33%
Coherence
33%
Quantitative Imaging
33%
Flow Cytometry
33%
Tumor Biopsy
33%
Flow Imaging
33%
Engineering
Phase Image
100%
Optical Path
100%
Machine Learning Algorithm
100%
Extracted Feature
100%
Healthy Cell
100%
Physics
Coherence
100%
Label-Free
100%
Machine Learning
100%
Optical Path
100%
Chemistry
Label
100%
Cytometry
100%
Flow Imaging
100%
Material Science
Tumor
100%
Flow Imaging
33%
Morphology
33%