r-cubed: Guiding the overwhelmed scientist from random wrangling to Reproducible Research in R

Luke Johnston, Helene Juel, Bettina Lengger, Daniel R Witte, H. Chatwin, Malene R Christiansen, A. Isaksen
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Abstract

The amount of biological data created increases every year, driven largely by technologies such as high-throughput -omics, real-time monitoring, or high resolution imaging in addition to greater access to routine administrative data and larger study populations. This not only presents operational challenges, but also highlights considerable needs for the skills and knowledge to manage, process, and analyze this data (Brownson et al., 2015). Along with the open science movement on the rise, methods and analytic processes are also increasingly expected to be open and transparent and for scientific studies to be reproducible (Watson, 2015).
R -立方:引导不知所措的科学家从随机争吵到R的可重复性研究
由于高通量组学、实时监测或高分辨率成像等技术的推动,以及常规管理数据的更大获取途径和更大的研究人群,每年产生的生物数据量都在增加。这不仅带来了操作上的挑战,而且还凸显了对管理、处理和分析这些数据的技能和知识的巨大需求(Brownson等人,2015)。随着开放科学运动的兴起,人们也越来越期望方法和分析过程是开放和透明的,并且科学研究是可重复的(Watson, 2015)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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