| Literature DB >> 26962703 |
Ayaka Matsumoto1, Chiyomi Sakamoto2, Haruka Matsumori2, Jun Katahira3, Yoko Yasuda2, Katsuhide Yoshidome4, Masahiko Tsujimoto5, Ilya G Goldberg6, Nariaki Matsuura1, Mitsuyoshi Nakao2,7, Noriko Saitoh2, Miki Hieda1.
Abstract
A supervised machine learning algorithm, which is qualified for image classification and analyzing similarities, is based on multiple discriminative morphological features that are automatically assembled during the learning processes. The algorithm is suitable for population-based analysis of images of biological materials that are generally complex and heterogeneous. Here we used the algorithm wndchrm to quantify the effects on nucleolar morphology of the loss of the components of nuclear envelope in a human mammary epithelial cell line. The linker of nucleoskeleton and cytoskeleton (LINC) complex, an assembly of nuclear envelope proteins comprising mainly members of the SUN and nesprin families, connects the nuclear lamina and cytoskeletal filaments. The components of the LINC complex are markedly deficient in breast cancer tissues. We found that a reduction in the levels of SUN1, SUN2, and lamin A/C led to significant changes in morphologies that were computationally classified using wndchrm with approximately 100% accuracy. In particular, depletion of SUN1 caused nucleolar hypertrophy and reduced rRNA synthesis. Further, wndchrm revealed a consistent negative correlation between SUN1 expression and the size of nucleoli in human breast cancer tissues. Our unbiased morphological quantitation strategies using wndchrm revealed an unexpected link between the components of the LINC complex and the morphologies of nucleoli that serves as an indicator of the malignant phenotype of breast cancer cells.Entities:
Keywords: LINC complex; SUN1; SUN2; breast cancer; lamin A/C; nuclear envelope; nuclear morphology; wndchrm
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Year: 2016 PMID: 26962703 PMCID: PMC4916878 DOI: 10.1080/19491034.2016.1149664
Source DB: PubMed Journal: Nucleus ISSN: 1949-1034 Impact factor: 4.197