Phenotypic Image Analysis Software Tools for Exploring and Understanding Big Image Data from Cell-Based Assays

被引:59
作者
Smith, Kevin [1 ,2 ]
Piccinini, Filippo [3 ]
Balassa, Tamas [4 ]
Koos, Krisztian [4 ]
Danka, Tivadar [4 ]
Azizpour, Hossein [1 ,2 ]
Horvath, Peter [4 ,5 ]
机构
[1] KTH Royal Inst Technol, Sch Elect Engn & Comp Sci, Lindstedtsvagen 3, S-10044 Stockholm, Sweden
[2] Sci Life Lab, Tomtebodavagen 23A, S-17165 Solna, Sweden
[3] IRCCS, Ist Sci Romagnolo Studio & Cura Tumori IRST, Via P Maroncelli 40, I-47014 Meldola, FC, Italy
[4] Hungarian Acad Sci, Synthet & Syst Biol Unit, BRC, Temesvari Krt 62, H-6726 Szeged, Hungary
[5] Univ Helsinki, Inst Mol Med Finland, Tukholmankatu 8, FIN-00014 Helsinki, Finland
关键词
RAMAN MICROSPECTROSCOPY; MICROSCOPY IMAGES; MASS-SPECTROMETRY; THROUGHPUT; CLASSIFICATION; STRATEGIES; DYNAMICS; PLATFORM; SCREENS; VISION;
D O I
10.1016/j.cels.2018.06.001
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
070307 [化学生物学]; 071010 [生物化学与分子生物学];
摘要
Phenotypic image analysis is the task of recognizing variations in cell properties using microscopic image data. These variations, produced through a complex web of interactions between genes and the environment, may hold the key to uncover important biological phenomena or to understand the response to a drug candidate. Today, phenotypic analysis is rarely performed completely by hand. The abundance of high-dimensional image data produced by modern high-throughput microscopes necessitates computational solutions. Over the past decade, a number of software tools have been developed to address this need. They use statistical learning methods to infer relationships between a cell's phenotype and data from the image. In this review, we examine the strengths and weaknesses of non-commercial phenotypic image analysis software, cover recent developments in the field, identify challenges, and give a perspective on future possibilities.
引用
收藏
页码:636 / 653
页数:18
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