Showing 4,921 - 4,940 results of 5,248 for search '"AI"', query time: 0.07s Refine Results
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    Call for Papers - Advancing Astropharmacy and Sports Pharmacy by Ashley Anderson, Ahmer Raza, Shireen Aziz, Misbah Noreen

    Published 2025-02-01
    “…His research focuses on developing an innovative decision-support AI tool for personalized care aimed at optimizing treatments, enhancing the quality of life for individuals with chronic complex conditions, improving the overall quality of care, and reducing societal healthcare costs. …”
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  5. 4925
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    光学相干断层扫描血管成像技术观察下的Vogt-小柳原田病的病理变化 by 张海萍, 迟玮, 袁进, 叶晓圆, 苏丽施, 李凡, 田烨, 华夏

    Published 2021-05-01
    “…对视网膜浅层毛细血管层的中心凹无血管区(FAZ)面积、非圆参数(AI)、视网膜浅层毛细血管层(SCP)的血管密度、视网膜深层毛细血管(DCP)的血管密度以及脉络膜毛细血管层(CC)的血管密度均使用ImageJ软件进行定量计算,同时用仪器内置软件测量中心凹下脉络膜厚度(SFCT)。…”
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  7. 4927

    Artificial intelligence-assisted clinical decision support for childhood asthma management: A randomized clinical trial. by Hee Yun Seol, Pragya Shrestha, Joy Fladager Muth, Chung-Il Wi, Sunghwan Sohn, Euijung Ryu, Miguel Park, Kathy Ihrke, Sungrim Moon, Katherine King, Philip Wheeler, Bijan Borah, James Moriarty, Jordan Rosedahl, Hongfang Liu, Deborah B McWilliams, Young J Juhn

    Published 2021-01-01
    “…<h4>Objectives</h4>To assess the effectiveness and efficiency of Asthma-Guidance and Prediction System (A-GPS), an Artificial Intelligence (AI)-assisted CDS tool, in optimizing asthma management through a randomized clinical trial (RCT).…”
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    Digital technologies for water use and management in agriculture: Recent applications and future outlook by Carlos Parra-López, Saker Ben Abdallah, Guillermo Garcia-Garcia, Abdo Hassoun, Hana Trollman, Sandeep Jagtap, Sumit Gupta, Abderrahmane Aït-Kaddour, Sureerat Makmuang, Carmen Carmona-Torres

    Published 2025-03-01
    “…UAV-mounted multispectral cameras) can accurately monitor soil moisture to optimise irrigation scheduling, while AI-driven models (e.g. random forest or neural networks) can predict groundwater recharge or forecast rainfall events. …”
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    Multiple ovulation was positively associated with milk yield independently of circulating progesterone concentrations in multiparous high-producing Holstein cows submitted to Doubl... by T.J. Valdés-Arciniega, E. Anta-Galván, I.M.R. Leão, T.O. Cunha, M.S. El Azzi, N.B. Cook, J.P.N. Martins

    Published 2025-02-01
    “…The study used first-service multiparous cows submitted to a Double-Ovsynch program (GnRH; 7 d later, PGF2α; 3 d later, GnRH; 7 d later, GnRH [G1]; 7 d later, PGF2α [PG1]; 1 d later, PGF2α; ∼32 h later, GnRH [G2]; ∼16 h later, timed AI [TAI]). To assess ovulatory response and proportion of MOV, ovarian ultrasonography examinations were performed at G1 (n = 1,215) and G2 (n = 1,345) and from 40 to 48 h after each GnRH. …”
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  20. 4940

    PHARAOH: A collaborative crowdsourcing platform for phenotyping and regional analysis of histology by Kevin Faust, Min Li Chen, Parsa Babaei Zadeh, Dimitrios G. Oreopoulos, Alberto J. Leon, Ameesha Paliwal, Evelyn Rose Kamski-Hennekam, Marly Mikhail, Xianpi Duan, Xianzhao Duan, Mugeng Liu, Narges Ahangari, Raul Cotau, Vincent Francis Castillo, Nikfar Nikzad, Richard J. Sugden, Patrick Murphy, Safiyh S. Aljohani, Philippe Echelard, Susan J. Done, Kiran Jakate, Zaid Saeed Kamil, Yazeed Alwelaie, Mohammed J. Alyousef, Noor Said Alsafwani, Assem Saleh Alrumeh, Rola M. Saleeb, Maxime Richer, Lidiane Vieira Marins, George M. Yousef, Phedias Diamandis

    Published 2025-01-01
    “…Here, we present an online collaborative platform that streamlines tissue image annotation to promote the development and sharing of custom computer vision models for PHenotyping And Regional Analysis Of Histology (PHARAOH; https://www.pathologyreports.ai/ ). Specifically, PHARAOH uses a weakly supervised, human-in-the-loop learning framework whereby patch-level image features are leveraged to organize large swaths of tissue into morphologically-uniform clusters for batched annotation by human experts. …”
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