Tadashi Hidaka,Keiko Imamura,Takeshi Hioki et al.
Tadashi Hidaka et al.
Machine learning is expected to improve low throughput and high assay cost in cell-based phenotypic screening. However, it is still a challenge to apply machine learning to achieving sufficiently complex phenotypic screening due to imbalanc...
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Daniel Osorio,Yan Zhong,Guanxun Li et al.
Daniel Osorio et al.
We present scTenifoldNet-a machine learning workflow built upon principal-component regression, low-rank tensor approximation, and manifold alignment-for constructing and comparing single-cell gene regulatory networks (scGRNs) using data fr...
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Madison S Krieger et al.
A central challenge in medicine is translating from observational understanding to mechanistic understanding, where some observations are recognized as causes for the others. This can lead not only to new treatments and understanding, but a...
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Filip Buric,Jan Zrimec,Aleksej Zelezniak
Filip Buric
High-throughput data-independent acquisition (DIA) is the method of choice for quantitative proteomics, combining the best practices of targeted and shotgun approaches. The resultant DIA spectra are, however, highly convolved and with no di...
Erratum: A Learning-Based Model to Evaluate Hospitalization Priority in COVID-19 Pandemics [0.03%]
新冠肺炎流行下评价住院优先级的评估模型的错误修正英文标题翻译成中文就是:关于用于评估新冠肺炎疫情期间住院优先级的学习模型的勘误表
Yichao Zheng,Yinheng Zhu,Mengqi Ji et al.
Yichao Zheng et al.
[This corrects the article DOI: 10.1016/j.patter.2020.100092.]. © 2020 The Authors.
Published Erratum
Patterns (New York, N.Y.). 2020 Dec 11;1(9):100173. DOI:10.1016/j.patter.2020.100173 2020
The Uk Reproducibility Network Steering Group
The Uk Reproducibility Network Steering Group
Academia uses methods and techniques that are cutting edge and constantly evolving, while the underlying cultures and working practices remain rooted in the 19th-century model of the independent scientist. Standardization in processes and d...
Inioluwa Deborah Raji
Inioluwa Deborah Raji
The contribution of Black female scholars to our understanding of data and their limits of representation hint at a more empathetic vision for data science that we should all learn from. ...
Gauthier Vernier,Hugo Caselles-Dupré,Pierre Fautrel
Gauthier Vernier
This opinion piece offers an insight on the origins of the debates around the question of whether and when we can reach artificial general intelligence in machine learning, and how science meets with spirituality when addressing this matter...
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Paul Arthur Berkman
Paul Arthur Berkman
Humanity faces a series of challenges over a range of timescales from minutes to centuries that are relevant to our sustainable development as a globally interconnected civilization. Our common survival at local-global levels depends on bei...
Preview of: A Primer on Motion Capture with Deep Learning: Principles, Pitfalls, and Perspectives [0.03%]
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Sarah Callaghan
Sarah Callaghan
Recent advances in deep learning have greatly simplified the measurement of animal behavior and advanced our understanding of how animals and humans behave. The article previewed here provides readers with an excellent overview of the topic...