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PICO

The proliferation of healthcare data has contributed to the widespread usage of the PICO paradigm for creating specific clinical questions from RCT.

PICO is a mnemonic that stands for:

Population/Problem: Addresses the characteristics of populations involved and the specific characteristics of the disease or disorder. Intervention: Addresses the primary intervention (including treatments, procedures, or diagnostic tests) along with any risk factors. Comparison: Compares the efficacy of any new interventions with the primary intervention. Outcome: Measures the results of the intervention, including improvements or side effects. PICO is an essential tool that aids evidence-based practitioners in creating precise clinical questions and searchable keywords to address those issues. It calls for a high level of technical competence and medical domain knowledge, but it’s also frequently very time-consuming.

Automatically identifying PICO elements from this large sea of data can be made easier with the aid of machine learning (ML) and natural language processing (NLP). This facilitates the development of precise research questions by evidence-based practitioners more quickly and precisely.

Empirical studies have shown that the use of PICO frames improves the specificity and conceptual clarity of clinical problems, elicits more information during pre-search reference interviews, leads to more complex search strategies, and yields more precise search results.

Papers

Showing 3140 of 68 papers

TitleStatusHype
Pixel-level Correspondence for Self-Supervised Learning from Video0
Low-complexity Three-dimensional Discrete Hartley Transform Approximations for Medical Image Compression0
Intra-Template Entity Compatibility based Slot-Filling for Clinical Trial Information Extraction0
DISTANT-CTO: A Zero Cost, Distantly Supervised Approach to Improve Low-Resource Entity Extraction Using Clinical Trials LiteratureCode0
LinkBERT: Pretraining Language Models with Document LinksCode2
Addressing Gap between Training Data and Deployed Environment by On-Device LearningCode0
Multi-Agent Path Finding with Prioritized Communication LearningCode1
PiCO+: Contrastive Label Disambiguation for Robust Partial Label LearningCode2
Contrastive Label Disambiguation for Partial Label LearningCode1
Truth Discovery in Sequence Labels from CrowdsCode0
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