TY - JOUR PY - 2020// TI - The truth behind the zeros: a new approach to principal component analysis of the Neuropsychiatric Inventory JO - Multivariate behavioral research A1 - Hellton, Kristoffer H. A1 - Cummings, Jeffrey A1 - Vik-Mo, Audun Osland A1 - Nordrehaug, Jan Erik A1 - Aarsland, Dag A1 - Selbaek, Geir A1 - Giil, Lasse Melvaer SP - ePub EP - ePub VL - ePub IS - ePub N2 - Psychiatric syndromes in dementia are often derived from the Neuropsychiatric Inventory (NPI) using principal component analysis (PCA). The validity of this statistical approach can be questioned, since the excessive proportion of zeros and skewness of NPI items may distort the estimated relations between the items. We propose a novel version of PCA, ZIBP-PCA, where a zero-inflated bivariate Poisson (ZIBP) distribution models the pairwise covariance between the NPI items. We compared the performance of the method to classical PCA under zero-inflation using simulations, and in two dementia-cohorts (Nā=ā830, Nā=ā1349). Simulations showed that component loadings from PCA were biased due to zero-inflation, while the loadings of ZIBP-PCA remained unaffected. ZIBP-PCA obtained a simpler component structure of "psychosis," "mood" and "agitation" in both dementia-cohorts, compared to PCA. The principal components from ZIBP-PCA had component loadings as follows: First, the component interpreted as "psychosis" was loaded by the items delusions and hallucinations. Second, the "mood" component was loaded by depression and anxiety. Finally, the "agitation" component was loaded by irritability and aggression. In conclusion, PCA is not equipped to handle zero-inflation. Using the NPI, PCA fails to identify components with a valid interpretation, while ZIBP-PCA estimates simple and interpretable components to characterize the psychopathology of dementia.
Language: en
LA - en SN - 0027-3171 UR - http://dx.doi.org/10.1080/00273171.2020.1736976 ID - ref1 ER -