Chronic Beneficial Effect of Makeup Therapy on Cognitive Function of Dementia and Facial Appearance Analyzed by Artificial Intelligence Software

痴呆 医学 认知 萧条(经济学) 内科学 精神科 疾病 宏观经济学 经济
作者
Koh Tadokoro,Toru Yamashita,Junko Sato,Yoshio Omote,Mami Takemoto,Ryuta Morihara,Koichiro Nishiura,Tomiko Tani,Koji Abe
出处
期刊:Journal of Alzheimer's Disease [IOS Press]
卷期号:85 (3): 1189-1194 被引量:2
标识
DOI:10.3233/jad-215385
摘要

Makeup greatly impacts normal social lives but can also be a non-pharmacological form of therapy for dementia.To evaluate the therapeutic effect of makeup therapy.We carried out a prospective interventional study on female nursing home residents with dementia, focusing on the chronic therapeutic effect of makeup therapy. Thirty-four patients who received either only skin care (control group, n = 16) or skin care plus makeup therapy (makeup therapy group, n = 18) once every 2 weeks for 3 months were assessed.Three months of makeup therapy significantly improved the Mini-Mental State Examination (MMSE) score compared with control patients (*p < 0.05). Artificial intelligence (AI) software revealed that the appearance of age decreased significantly in the makeup group compared with the control, especially among patients without depression (*p < 0.05). Furthermore, a larger AI happiness score was significantly correlated with a greater improvement of ADL in the makeup therapy group (r = 0.43, *p < 0.05).Makeup therapy had a chronic beneficial effect on the cognitive function of female dementia patients, while the chronic effect of makeup therapy on facial appearance was successfully detected by the present AI software.

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