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Challenges and Opportunities with Causal Discovery Algorithms: Application to Alzheimer's Pathophysiology

Authors :
Shen, Xinpeng
Ma, Sisi
Vemuri, Prashanthi
Simon, Gyorgy
Weiner, Michael W.
Aisen, Paul
Petersen, Ronald
Jack, Clifford R.
Saykin, Andrew J.
Jagust, William
Trojanowki, John Q.
Toga, Arthur W.
Beckett, Laurel
Green, Robert C.
Morris, John
Shaw, Leslie M.
Khachaturian, Zaven
Sorensen, Greg
Carrillo, Maria
Kuller, Lew
Raichle, Marc
Paul, Steven
Davies, Peter
Fillit, Howard
Hefti, Franz
Holtzman, David
Mesulam, M. Marcel
Potter, William
Snyder, Peter
Schwartz, Adam
Montine, Tom
Thomas, Ronald G.
Source :
Scientific reports, vol 10, iss 1, Medical Biophysics Publications, Scientific Reports, Vol 10, Iss 1, Pp 1-12 (2020), Scientific Reports
Publication Year :
2020
Publisher :
eScholarship, University of California, 2020.

Abstract

Causal Structure Discovery (CSD) is the problem of identifying causal relationships from large quantities of data through computational methods. With the limited ability of traditional association-based computational methods to discover causal relationships, CSD methodologies are gaining popularity. The goal of the study was to systematically examine whether (i) CSD methods can discover the known causal relationships from observational clinical data and (ii) to offer guidance to accurately discover known causal relationships. We used Alzheimer’s disease (AD), a complex progressive disease, as a model because the well-established evidence provides a “gold-standard” causal graph for evaluation. We evaluated two CSD methods, Fast Causal Inference (FCI) and Fast Greedy Equivalence Search (FGES) in their ability to discover this structure from data collected by the Alzheimer’s Disease Neuroimaging Initiative (ADNI). We used structural equation models (which is not designed for CSD) as control. We applied these methods under three scenarios defined by increasing amounts of background knowledge provided to the methods. The methods were evaluated by comparing the resulting causal relationships with the “gold standard” graph that was constructed from literature. Dedicated CSD methods managed to discover graphs that nearly coincided with the gold standard. For best results, CSD algorithms should be used with longitudinal data providing as much prior knowledge as possible.

Details

Database :
OpenAIRE
Journal :
Scientific reports, vol 10, iss 1, Medical Biophysics Publications, Scientific Reports, Vol 10, Iss 1, Pp 1-12 (2020), Scientific Reports
Accession number :
edsair.doi.dedup.....472507ef36c7f09c5f5ce428ba15ebf1