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Kang JM, Manjavong M, Diaz A, Ashford MT, Aaronson A, Eichenbaum J, Mackin RS, Tank R, Miller MJ, Landavazo B, Cavallone E, Truran D, Camacho MR, Fockler J, Flenniken D, Farias ST, Weiner MW, Nosheny R
Evaluating the Accuracy of Web-Based and In-Clinic Subjective Cognitive Decline Assessments in Detecting Cognitive Impairment: Multicohort Study
Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.
Evaluating the Accuracy of Online and In-Clinic Subjective Cognitive Decline Assessments in Detecting Cognitive Impairment
Jae Myeong Kang;
Manchumad Manjavong;
Adam Diaz;
Miriam T Ashford;
Anna Aaronson;
Joseph Eichenbaum;
R. Scott Mackin;
Rachana Tank;
Melanie J. Miller;
Bernard Landavazo;
Erika Cavallone;
Diana Truran;
Monica R. Camacho;
Juliet Fockler;
Derek Flenniken;
Sarah Tomaszewski Farias;
Michael W. Weiner;
Rachel Nosheny
ABSTRACT
Background:
Scalable tools to efficiently identify individuals likely to have cognitive impairment (CI) are critical in the Alzheimer’s disease and related dementias field. The Everyday Cognition scale (ECog) and its short form (ECog12) assess subjective cognitive and functional changes and are useful in predicting CI.
Objective:
This study aimed to compare the ability of the online ECog and the in-clinic ECog in distinguishing between CI and cognitively unimpaired (CU) individuals, and to evaluate the effectiveness of the ECog12 compared to the full ECog in an online setting.
Methods:
Participants were recruited from the Brain Health Registry (BHR; online) and Alzheimer’s Disease Neuroimaging Initiative (ADNI; in-clinic) with available clinical diagnoses. Ability of ECog and ECog12 (Self- and study partner [SP]-ECog) to discriminate CI from CU were calculated using Receiver Operating Characteristic (ROC) curves. Area under the ROC curves (AUCs) between BHR and ADNI were compared using the DeLong test, as were AUCs between ECog12 and ECog in BHR.
Results:
Both online and in-clinic ECog effectively discriminated CI from CU, with no significant differences in AUCs (BHR Self-ECog AUC = 0.722 vs. ADNI Self-ECog AUC = 0.769, DeLong P = .06; BHR SP-ECog AUC = 0.818 vs. ADNI SP-ECog AUC = 0.840, DeLong P = .50). Comparison between online ECog and ECog12 showed no significant differences in AUCs (Self-ECog AUC = 0.722 vs. Self-ECog12 AUC = 0.709, DeLong P = .18).
Conclusions:
Online ECog, including the short-form ECog12, is as valid as in-clinic ECog for identifying clinically diagnosed CI, offering a cost-effective and accessible screening tool for large-scale online studies for identifying potential candidates for disease-modifying therapy.
Citation
Please cite as:
Kang JM, Manjavong M, Diaz A, Ashford MT, Aaronson A, Eichenbaum J, Mackin RS, Tank R, Miller MJ, Landavazo B, Cavallone E, Truran D, Camacho MR, Fockler J, Flenniken D, Farias ST, Weiner MW, Nosheny R
Evaluating the Accuracy of Web-Based and In-Clinic Subjective Cognitive Decline Assessments in Detecting Cognitive Impairment: Multicohort Study