Gabor Features for the Classification and Evaluation of Chromogenic In-Situ Hybridization Images

被引:1
|
作者
Pavlov, Stoyan [1 ,3 ]
Momcheva, Galina [2 ,3 ]
Burlakova, Pavlina [2 ]
Atanasov, Simeon [2 ]
Stoyanov, Dimo [1 ,3 ]
Ivanov, Martin [1 ,3 ]
Tonchev, Anton [1 ]
机构
[1] Med Univ Prof Dr Paraskev Stoyanov, Dept Anat & Cell Biol, Fac Med, Prof Marin Drinov Str 55, Varna 9000, Bulgaria
[2] Varna Free Univ Chernorizets Hrabar, Dept Comp Sci, Yanko Slavchev Str 84, Varna 9007, Bulgaria
[3] Res Inst Med Univ Prof Dr Paraskev Stoyanov, Res Grp Adv Computat Bioimaging, Prof Marin Drinov Str 55, Varna 9000, Bulgaria
关键词
Chromogenic in-situ hybridization; Texture analysis; Machine learning; Feature extraction;
D O I
10.1007/978-3-030-96638-6_39
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
High-throughput chromogenic in-situ hybridization (CISH) is a brightfield microscopic technique that reveals the spatial distribution of gene expression in animal cells and tissues by an easily detectable coloured precipitate. The "golden standard" for the grading of CISH-stained tissues involves qualitative scoring by a domain expert. This method is biased, suffers from low reproducibility, and lowers the efficiency of high-throughput experiments. A few quantitative image analysis approaches resolve these issues, but the proposed methods are sensitive to experimental conditions or require expert adjustment of multiple parameters. The idea of our research team is to extract textural information from CISH-images that will be used to generate a feature space for semantic segmentation and functional analysis of gene expression. In our current work, we explore the idea by unsupervised classification based on features generated via Gabor energy filters. The tissue was divided into overlapping 150 mu m tiles and processed with a Gabor filter bank (5 wavelengths, 16 directions, bandwidth 1.4). The results for the 16 directions at each wavelength were combined by a maximum superposition into a single image, and the mean grey value, standard deviation and entropy were measured. After appropriate dimensionality reduction, the tiles were classified by a fuzzy C-means algorithm. Four experts without prior knowledge of the classification results evaluated the strength and pattern of gene expression of a set of randomly selected tiles, and independently each class in the original whole-slide images. A comparison between the class-scale and tile-scale evaluations was used to assess the usefulness of the selected features.
引用
收藏
页码:375 / 383
页数:9
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