Background: Human life expectancy is constantly increasing: the challenge for modern geriatric medicine is to identify the means to reach successfully extreme longevity. Objective: To determine which are the survival determinants in centenarians using a neural network. Methods: Sample of 110 centenarians living in Rome, mean age 101.6 years (SD = 1.8) with a sex ratio males: females of 1: 3. We administered an extensive health interview (lasting 1–2 h) to each subject. The questionnaire, carried out according to the Geriatric Multidimensional Assessment, is made up of 100 items including a comprehensive health and psychosocial assessment aimed at various topics of general health and well-being and some scales used in geriatric practice. We applied several three-layered feed-forward neural networks by mixing in different ways the most important of the 100 items. Results: The most predicting powered net is the one constructed with 23 variables regarding comorbidity, cardiovascular risk factors, cognitive status, mood,functional status and social interactions, which therefore are strictly related to survival in centenarians. Conclusion: Survival in longevity is a complex biological phenomenon, which is an ideal fi eld for using the neural network as a statistic method. The net shows us that the maintenance of social relationships even in presence of disability is of major importance for survival in the oldest old.

Is it possible to predict ore-year survival in centenarians? A neural network study / Tafaro, L; Cicconetti, Paolo; Piccirillo, Gianfranco; Ettorre, Evaristo; Marigliano, Vincenzo; Cacciafesta, Mauro. - In: GERONTOLOGY. - ISSN 0304-324X. - 51(3):(2005), pp. 199-205. [10.1159/000083994]

Is it possible to predict ore-year survival in centenarians? A neural network study

CICCONETTI, Paolo;PICCIRILLO, Gianfranco;ETTORRE, Evaristo;MARIGLIANO, Vincenzo;CACCIAFESTA, Mauro
2005

Abstract

Background: Human life expectancy is constantly increasing: the challenge for modern geriatric medicine is to identify the means to reach successfully extreme longevity. Objective: To determine which are the survival determinants in centenarians using a neural network. Methods: Sample of 110 centenarians living in Rome, mean age 101.6 years (SD = 1.8) with a sex ratio males: females of 1: 3. We administered an extensive health interview (lasting 1–2 h) to each subject. The questionnaire, carried out according to the Geriatric Multidimensional Assessment, is made up of 100 items including a comprehensive health and psychosocial assessment aimed at various topics of general health and well-being and some scales used in geriatric practice. We applied several three-layered feed-forward neural networks by mixing in different ways the most important of the 100 items. Results: The most predicting powered net is the one constructed with 23 variables regarding comorbidity, cardiovascular risk factors, cognitive status, mood,functional status and social interactions, which therefore are strictly related to survival in centenarians. Conclusion: Survival in longevity is a complex biological phenomenon, which is an ideal fi eld for using the neural network as a statistic method. The net shows us that the maintenance of social relationships even in presence of disability is of major importance for survival in the oldest old.
2005
01 Pubblicazione su rivista::01a Articolo in rivista
Is it possible to predict ore-year survival in centenarians? A neural network study / Tafaro, L; Cicconetti, Paolo; Piccirillo, Gianfranco; Ettorre, Evaristo; Marigliano, Vincenzo; Cacciafesta, Mauro. - In: GERONTOLOGY. - ISSN 0304-324X. - 51(3):(2005), pp. 199-205. [10.1159/000083994]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/233706
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