» Articles » PMID: 26610249

Addressing Item-Level Missing Data: A Comparison of Proration and Full Information Maximum Likelihood Estimation

Overview
Date 2015 Nov 27
PMID 26610249
Citations 56
Authors
Affiliations
Soon will be listed here.
Abstract

Often when participants have missing scores on one or more of the items comprising a scale, researchers compute prorated scale scores by averaging the available items. Methodologists have cautioned that proration may make strict assumptions about the mean and covariance structures of the items comprising the scale (Schafer & Graham, 2002 ; Graham, 2009 ; Enders, 2010 ). We investigated proration empirically and found that it resulted in bias even under a missing completely at random (MCAR) mechanism. To encourage researchers to forgo proration, we describe a full information maximum likelihood (FIML) approach to item-level missing data handling that mitigates the loss in power due to missing scale scores and utilizes the available item-level data without altering the substantive analysis. Specifically, we propose treating the scale score as missing whenever one or more of the items are missing and incorporating items as auxiliary variables. Our simulations suggest that item-level missing data handling drastically increases power relative to scale-level missing data handling. These results have important practical implications, especially when recruiting more participants is prohibitively difficult or expensive. Finally, we illustrate the proposed method with data from an online chronic pain management program.

Citing Articles

Reporting on knowledge, attitudes, and behaviours of pharmacists regarding the active offer of French language health services in Ontario: A quantitative survey study.

Timony P, Leone A, Caron C, Giguere P, Thabet P, Gauthier A Can Pharm J (Ott). 2025; :17151635241308874.

PMID: 39885954 PMC: 11775929. DOI: 10.1177/17151635241308874.


Social Contributors to Differences in Math Course Attainment Among Adolescents with and without Learning Disabilities and ADHD.

Shifrer D, Frederick A, Freeman D, Ellefritz H, Springer R Soc Sci Res. 2024; 126:103096.

PMID: 39669720 PMC: 11633642. DOI: 10.1016/j.ssresearch.2024.103096.


Diverse Face Images (DFI): Validated for racial representation and eye gaze.

Pickron C, Brown A, Hudac C, Scott L Behav Res Methods. 2024; 56(8):8801-8819.

PMID: 39285143 DOI: 10.3758/s13428-024-02504-2.


Using National Data to Understand the Contextual Factors and Negative Experiences that Explain Racial Differences in the School Misbehavior of Ninth Grade Boys and Girls.

Appleton C, Shifrer D, Rebellon C J Early Adolesc. 2024; 44(8):1023-1048.

PMID: 39247154 PMC: 11378974. DOI: 10.1177/02724316231223531.


Suicidal ideation and attempts among Nigerian undergraduates: Exploring the relationships with depression, hopelessness, perceived burdensomeness, and thwarted belongingness.

Iweama C, Agbaje O, Lerum N, Igbokwe C, Ozoemena L SAGE Open Med. 2024; 12:20503121241236137.

PMID: 38533197 PMC: 10964440. DOI: 10.1177/20503121241236137.


References
1.
Collins L, Schafer J, Kam C . A comparison of inclusive and restrictive strategies in modern missing data procedures. Psychol Methods. 2002; 6(4):330-51. View

2.
Schafer J, Graham J . Missing data: our view of the state of the art. Psychol Methods. 2002; 7(2):147-77. View

3.
Enders C . Using the expectation maximization algorithm to estimate coefficient alpha for scales with item-level missing data. Psychol Methods. 2003; 8(3):322-37. DOI: 10.1037/1082-989X.8.3.322. View

4.
Graham J, Taylor B, Olchowski A, Cumsille P . Planned missing data designs in psychological research. Psychol Methods. 2006; 11(4):323-43. DOI: 10.1037/1082-989X.11.4.323. View

5.
Graham J, Olchowski A, Gilreath T . How many imputations are really needed? Some practical clarifications of multiple imputation theory. Prev Sci. 2007; 8(3):206-13. DOI: 10.1007/s11121-007-0070-9. View