Paper List
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Mapping of Lesion Images to Somatic Mutations
This paper addresses the critical bottleneck of delayed genetic analysis in cancer diagnosis by predicting a patient's full somatic mutation profile d...
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Reinventing Clinical Dialogue: Agentic Paradigms for LLM‑Enabled Healthcare Communication
This paper addresses the core challenge of transforming reactive, stateless LLMs into autonomous, reliable clinical dialogue agents capable of longitu...
The BEAT-CF Causal Model: A model for guiding the design of trials and observational analyses of cystic fibrosis exacerbations
Bayesian Intelligence | Monash University | The Kids Research Institute Australia | University of Sydney | The Children's Hospital at Westmead
The 30-Second View
IN SHORT: This paper addresses the critical gap in cystic fibrosis exacerbation management by providing a formal causal framework that integrates expert knowledge to guide clinical trial design and enable robust causal inference.
Innovation (TL;DR)
- Methodology Developed a comprehensive Bayesian causal model (DAG/BN) integrating 4 domains (background factors, treatments, exacerbation episode, outcomes) with 30+ nodes representing key pathophysiological processes
- Methodology Implemented a structured expert elicitation process involving 30+ CF clinicians across multiple workshops (2017-2019) using Delphi/nominal group techniques for variable selection and validation
- Biology Explicitly models the causal pathways between abnormal mucus clearance, pathogen colonization (Pseudomonas aeruginosa, MRSA, etc.), infection, and inflammation - enabling targeted treatment effect analysis
Key conclusions
- The BEAT-CF causal model successfully integrates expert knowledge from 30+ clinicians into a formal DAG structure with 4 domains and 30+ nodes, validated through multiple workshops (2017-2019)
- The framework enables explicit causal inference by identifying necessary adjustments for statistical analyses, directly guiding data collection design for clinical trials
- The model provides a reusable, transparent framework that captures key relationships between background factors (lung disease age, CFTR mutations), treatments (antibiotics, anti-inflammatories), and outcomes (lung function decline, mortality)
Abstract: Loss of lung function in cystic fibrosis (CF) occurs progressively, punctuated by acute pulmonary exacerbations (PEx) in which abrupt declines in lung function are not fully recovered. A key component of CF management over the past half century has been the treatment of PEx to slow lung function decline. This has been credited with improvements in survival for people with CF (PwCF), but there is no consensus on the optimal approach to PEx management. BEAT-CF (Bayesian evidence-adaptive treatment of CF) was established to build an evidence-informed knowledge base for CF management. The BEAT-CF causal model is a directed acyclic graph (DAG) and Bayesian network (BN) for PEx that aims to inform the design and analysis of clinical trials comparing the effectiveness of alternative approaches to PEx management. The causal model describes relationships between background risk factors, treatments, and pathogen colonisation of the airways that affect the outcome of an individual PEx episode. The key factors, outcomes, and causal relationships were elicited from CF clinical experts and together represent current expert understanding of the pathophysiology of a PEx episode, guiding the design of data collection and studies and enabling causal inference. Here, we present the DAG that documents this understanding, along with the processes used in its development, providing transparency around our trial design and study processes, as well as a reusable framework for others.