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Summary Anatomy Item Literature (650) Expression Attributions Wiki
XB-ANAT-299

Papers associated with deep (and six1)

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Xenopus Six1 gene is expressed in neurogenic cranial placodes and maintained in the differentiating lateral lines., Pandur PD., Mech Dev. September 1, 2000; 96 (2): 253-7.    


Molecular anatomy of placode development in Xenopus laevis., Schlosser G., Dev Biol. July 15, 2004; 271 (2): 439-66.                          


XSip1 neuralizing activity involves the co-repressor CtBP and occurs through BMP dependent and independent mechanisms., van Grunsven LA., Dev Biol. June 1, 2007; 306 (1): 34-49.            


The Wnt antagonists Frzb-1 and Crescent locally regulate basement membrane dissolution in the developing primary mouth., Dickinson AJ., Development. April 1, 2009; 136 (7): 1071-81.                                      


The F-box protein Cdc4/Fbxw7 is a novel regulator of neural crest development in Xenopus laevis., Almeida AD., Neural Dev. January 4, 2010; 5 1.                              


Origin and segregation of cranial placodes in Xenopus laevis., Pieper M., Dev Biol. December 15, 2011; 360 (2): 257-75.                        


Xenopus Nkx6.3 is a neural plate border specifier required for neural crest development., Zhang Z., PLoS One. December 15, 2014; 9 (12): e115165.            


Microarray identification of novel genes downstream of Six1, a critical factor in cranial placode, somite, and kidney development., Yan B., Dev Dyn. February 1, 2015; 244 (2): 181-210.                          


Sox17 and β-catenin co-occupy Wnt-responsive enhancers to govern the endoderm gene regulatory network., Mukherjee S., Elife. September 7, 2020; 9                           


Deep learning is widely applicable to phenotyping embryonic development and disease., Naert T., Development. November 1, 2021; 148 (21):                                                                 

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