Utilizing a digital swarm intelligence platform to improve consensus among radiologists and exploring its applications
Rutwik Shah, Bruno Astuto, Tyler Gleason, Will Fletcher, Justin, Banaga, Kevin Sweetwood, Allen Ye, Rina Patel, Kevin McGill, Thomas Link,, Jason Crane, Valentina Pedoia, Sharmila Majumdar

TL;DR
This study demonstrates that a digital swarm intelligence platform enhances diagnostic consensus among radiologists and residents, outperforming individual judgments and AI predictions, thereby improving clinical decision-making and AI training data quality.
Contribution
The paper introduces a novel digital swarm platform that improves inter-reader reliability and consensus in radiology, outperforming traditional methods and AI predictions.
Findings
Swarm consensus improved IRR by up to 32%.
Swarm votes increased specificity by up to 50%.
Larger swarms yielded better reliability and performance.
Abstract
Radiologists today play a key role in making diagnostic decisions and labeling images for training A.I. algorithms. Low inter-reader reliability (IRR) can be seen between experts when interpreting challenging cases. While teams-based decisions are known to outperform individual decisions, inter-personal biases often creep up in group interactions which limit non-dominant participants from expressing true opinions. To overcome the dual problems of low consensus and inter-personal bias, we explored a solution modeled on biological swarms of bees. Two separate cohorts; three radiologists and five radiology residents collaborated on a digital swarm platform in real time and in a blinded fashion, grading meniscal lesions on knee MR exams. These consensus votes were benchmarked against clinical (arthroscopy) and radiological (senior-most radiologist) observations. The IRR of the consensus…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Clinical Reasoning and Diagnostic Skills · Radiology practices and education
