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치매의 등급척도인 전반적퇴화척도(Global Deterioration Scale)의 등급판정 알고리듬 개발 및 타당도 조사Development of Global Deterioration Scale Staging Algorithm

Other Titles
Development of Global Deterioration Scale Staging Algorithm
Authors
원장원백종우박기정김상윤박건우이동우한상태
Issue Date
2011
Publisher
대한노인병학회
Keywords
Global Deterioration Scale; Algorithms; Dementia
Citation
Annals of geriatric medicine and research, v.15, no.2, pp.80 - 89
Indexed
KCI
OTHER
Journal Title
Annals of geriatric medicine and research
Volume
15
Number
2
Start Page
80
End Page
89
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/113940
ISSN
2508-4798
Abstract
Background: The Global Deterioration Scale(GDS) is a useful tool for staging dementia; each stage is described by spe- cific characteristics. However, one should not rely on the presence or absence of a single symptom in determining the stage. There is a need for a systematic computerized program to enable untrained doctors to easily assess dementia. This study aimed to generate an algorithm to help stage dementia. Methods: Items were drawn from each stage and sorted out into questions adequate for the caregiver and questions adequate for the patient. Subjects recruited were 50 years or older and had visited the neurologic and/or psychiatric clinic at any of the university affiliated hospitals with symptoms of memory impairment. Structured questionnaires with 20 questions were administered to the subject-informant dyads. Psychometricians or well-trained nurses then assessed the remaining 10 items and decided the overall stage. Classification tree analysis was accomplished by using SPSS Answer Tree 3.0 software. Results: 182 subject-informant dyads were included in the analysis. The mean age was 74.5 years; 112(61.5%) were female. Among the 30 predictors, the item ‘get lost when travelling’ was the most important predictor of GDS score(χ2= 96.6, p=0.0000). The classification tree algorithm begins with the item ‘get lost when travelling’ and includes 13 predicting variables. The most probable GDS predicted scores are presented in the final nodes of the algorithm. Risk estimate, pro- bability of misclassification in the developed model, was 35.2%. Conclusion: A classification tree algorithm for GDS staging was developed to narrow down the range of choices when staging cognitive impairment. The algorithm is yet to undergo validity and reliability tests.
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