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According to these participants, this was problematic as having multiple people responsible for data collection often diminished the quality of data collected.
Data collection often hinges upon either manual chart review or ad hoc requests to technical experts who support legacy clinical systems.
In epidemiological research, committed investigators may plan and organize every step of a survey but data collection often depends on hired interviewers with no personal interest in the research.
Second, retrospective data collection often leads to incomplete data.
High quality benchmark datasets require meticulous data collection often from diverse sources and careful checking of the correctness of the data.
Data collection often consumes most of the budget and few resources are then available for quality control, data analysis and reporting of findings.
Similar(51)
Primary data collection is often time-consuming and costly; consequently, it is often only done on a smaller scale.
Data sources for patient registries range from clinic-based through administrative data collection and often there is capture of patient demographic and/or medical data.
This effect of data collection is often overlooked.
Counting is political and data collection is often a kind of social exchange.
However, experimental data collection is often labour and cost intensive and can give rise to production losses.
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