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    Doctors taking bribes from pharmaceutical companies is common and not substantially reduced by an educational intervention: a pragmatic randomised controlled trial in Pakistan by Afifah Rahman-Shepherd, Johanna Hanefeld, Mishal Khan, Charles Opondo, Sameen Siddiqi, Virginia Wiseman, Iqbal Azam, Wafa Aftab, Sadia Shakoor, Amna Rehana Siddiqui, Rumina Hasan, Zafar Mirza, Muhammad Naveed Noor, Sabeen Sharif Khan, Nina van der Mark, Afshan Khurshid Isani, Ahson Q Siddiqi, Faisal Ziauddin, Faiza Bhutto, Natasha Ali, Robyna Irshad Khan, Syed Ahmed Raza Kazmi, Zainab Hasan

    Published 2024-01-01
    “…After adjusting for doctors’ age, sex and clinic district, there was no evidence of the intervention’s impact on the primary outcome (OR 0.70 [95% CI 0.40 to 1.20], p=0.192).Conclusions This first study to covertly assess deal-making between doctors and pharmaceutical company representatives demonstrated that the practice is strikingly widespread in the study setting and suggested that substantial reductions are unlikely to be achieved by educational interventions alone. Our novel method provides an opportunity to generate evidence on deal-making between doctors and pharmaceutical companies elsewhere.…”
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    ChromaFold predicts the 3D contact map from single-cell chromatin accessibility by Vianne R. Gao, Rui Yang, Arnav Das, Renhe Luo, Hanzhi Luo, Dylan R. McNally, Ioannis Karagiannidis, Martin A. Rivas, Zhong-Min Wang, Darko Barisic, Alireza Karbalayghareh, Wilfred Wong, Yingqian A. Zhan, Christopher R. Chin, William S. Noble, Jeff A. Bilmes, Effie Apostolou, Michael G. Kharas, Wendy Béguelin, Aaron D. Viny, Danwei Huangfu, Alexander Y. Rudensky, Ari M. Melnick, Christina S. Leslie

    Published 2024-11-01
    “…We therefore present ChromaFold, a deep learning model that predicts 3D contact maps, including regulatory interactions, from single-cell ATAC sequencing (scATAC-seq) data alone. ChromaFold uses pseudobulk chromatin accessibility, co-accessibility across metacells, and a CTCF motif track as inputs and employs a lightweight architecture to train on standard GPUs. …”
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