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2018 1
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High-throughput platform for yeast morphological profiling predicts the targets of bioactive compounds.
Ohnuki S, Ogawa I, Itto-Nakama K, Lu F, Ranjan A, Kabbage M, Gebre AA, Yamashita M, Li SC, Yashiroda Y, Yoshida S, Usui T, Piotrowski JS, Andrews BJ, Boone C, Brown GW, Ralph J, Ohya Y. Ohnuki S, et al. Among authors: brown gw. NPJ Syst Biol Appl. 2022 Jan 27;8(1):3. doi: 10.1038/s41540-022-00212-1. NPJ Syst Biol Appl. 2022. PMID: 35087094 Free PMC article.
Angiogenic factor imbalance precedes complement deposition in placentae of the BPH/5 model of preeclampsia.
Sones JL, Merriam AA, Seffens A, Brown-Grant DA, Butler SD, Zhao AM, Xu X, Shawber CJ, Grenier JK, Douglas NC. Sones JL, et al. Among authors: brown grant da. FASEB J. 2018 May;32(5):2574-2586. doi: 10.1096/fj.201701008R. Epub 2018 Jan 8. FASEB J. 2018. PMID: 29279353 Free PMC article.
D., Zhao, A. M., Xu, X., Shawber, C. J., Grenier, J. K., Douglas, N. C. Angiogenic factor imbalance precedes complement deposition in placentae of the BPH/5 model of preeclampsia....
D., Zhao, A. M., Xu, X., Shawber, C. J., Grenier, J. K., Douglas, N. C. Angiogenic factor imbalance precedes complement deposition in …
Trajectories of Dental Caries From Childhood to Young Adulthood: Unsupervised Machine Learning Approach.
Ogwo C, Levy S, Warren J, Caplan D, Brown G. Ogwo C, et al. Among authors: brown g. Res Sq [Preprint]. 2023 Jul 28:rs.3.rs-3125821. doi: 10.21203/rs.3.rs-3125821/v1. Res Sq. 2023. PMID: 37546769 Free PMC article. Preprint.
The trajectory analysis of caries in the permanent dentition at ages 9, 13, 17 and 23 was performed using the unsupervised machine learning algorithm known as K-means for Longitudinal Data (KmL), a k-means based clustering algorithm implemented in R specifically des …
The trajectory analysis of caries in the permanent dentition at ages 9, 13, 17 and 23 was performed using the unsupervised machine learning …