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Abstract Details

Evaluating the Performance of Category Fluency Tests in Detecting Mild Cognitive Impairment Using the National Alzheimer's Coordinating Center Database
Aging, Dementia, and Behavioral Neurology
P8 - Poster Session 8 (11:45 AM-12:45 PM)
12-002

Compare the performance of category fluency to that of letter fluency, MoCA (Montreal Cognitive Assessment), and MMSE (Mini-Mental Status Exam) in detecting mild cognitive impairment (MCI).  

The MMSE and MoCA are brief cognitive screens used to detect MCI. Letter fluency is included in the English MoCA, but not category fluency, despite a tendency for the latter to decline early in Alzheimer’s disease. Limited sample sizes in the existing literature contribute to uncertainty regarding use of category fluency as a comparable screen.  

We extracted initial study-visit data from the National Alzheimer’s Coordinating Center (NACC) database for two measures of category fluency  (n=32762), two measures of phonemic fluency  (n=13731), the MMSE (n=18929), and the MoCA (n=13833) for participants clinically diagnosed as either cognitively unimpaired (CU) or MCI.  We performed ROC (Receiver Operating Curve) analyses to detect MCI from non-MCI (normal and insufficient impairment for MCI) per clinician diagnosis at the initial visit, based on these measures. Statistical comparisons were based on bootstrapping ROC Area Under the Curve (AUC) values, with n = 20,000 iterations. Claude Sonnet 4.0 was used for assistance with MATLAB code generation for data analysis. 

Both category fluency measures, Animal fluency (AUC=0.72, Accuracy=0.703) and Vegetable fluency (AUC=0.73, Accuracy=0.708), displayed significantly higher AUC and accuracy levels than both phonemic fluency measures, fluency for the letters F (AUC=0.64, Accuracy=0.681) and L (AUC=0.63, Accuracy=0.682), for detecting MCI vs CU individuals (p<0.0001 in all cases). Combining animal and vegetable fluency further increased diagnostic accuracy (AUC=0.75, Accuracy=0.722, p<0.0001), reaching levels at least approximate to the MMSE (AUC=0.73, Accuracy=0.723), while the MoCA was superior (AUC=0.79, Accuracy=0.752).

For cognitive screening, category fluency outperforms letter fluency and at least approximates MMSE in detecting MCI. This is one of the largest studies to date examining fluency measures in MCI detection. Future prospective studies are warranted.
Authors/Disclosures
Kevin Sikah, MD (Beth Israel Deaconess Medical Center)
PRESENTER
Dr. Sikah has nothing to disclose.
Hsueh-Sheng Chiang, MD, PhD (Beth Israel Deaconess Medical Center) The institution of Dr. Chiang has received research support from NIH/NIDCD. The institution of Dr. Chiang has received research support from Texas Alzheimer's Research and Care Consortium.
Sabrina Smith Mrs. Smith has nothing to disclose.
Daniel Press, MD (Beth Israel Deaconess Medical Center) Dr. Press has received personal compensation in the range of $500-$4,999 for serving on a Scientific Advisory or Data Safety Monitoring board for CND Life Sciences. Dr. Press has received personal compensation in the range of $10,000-$49,999 for serving as an officer or member of the Board of Directors for Burke Neuroscience Board. The institution of Dr. Press has received research support from NIH. The institution of Dr. Press has received research support from Biogen. The institution of Dr. Press has received research support from Janssen. Dr. Press has received publishing royalties from a publication relating to health care. Dr. Press has received personal compensation in the range of $500-$4,999 for serving as a Advisory Panel Member with FDA.