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Publication : LAMA: automated image analysis for the developmental phenotyping of mouse embryos.

First Author  Horner NR Year  2021
Journal  Development Volume  148
Issue  18 PubMed ID  33574040
Mgi Jnum  J:310077 Mgi Id  MGI:6756286
Doi  10.1242/dev.192955 Citation  Horner NR, et al. (2021) LAMA: automated image analysis for the developmental phenotyping of mouse embryos. Development 148(18):dev192955
abstractText  Advanced 3D imaging modalities, such as micro-computed tomography (micro-CT), have been incorporated into the high-throughput embryo pipeline of the International Mouse Phenotyping Consortium (IMPC). This project generates large volumes of raw data that cannot be immediately exploited without significant resources of personnel and expertise. Thus, rapid automated annotation is crucial to ensure that 3D imaging data can be integrated with other multi-dimensional phenotyping data. We present an automated computational mouse embryo phenotyping pipeline that harnesses the large amount of wild-type control data available in the IMPC embryo pipeline in order to address issues of low mutant sample number as well as incomplete penetrance and variable expressivity. We also investigate the effect of developmental substage on automated phenotyping results. Designed primarily for developmental biologists, our software performs image pre-processing, registration, statistical analysis and segmentation of embryo images. We also present a novel anatomical E14.5 embryo atlas average and, using it with LAMA, show that we can uncover known and novel dysmorphology from two IMPC knockout lines.
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