Literature DB >> 20230141

Are processing speed tasks biomarkers of cognitive aging?

Ian J Deary1, Wendy Johnson, John M Starr.   

Abstract

We examined the association between 5 processing speed measures and general cognitive ability in a large (>900) sample of relatively healthy men and women at age 70. The processing speed tests were the Wechsler Digit Symbol-Coding and Symbol Search, simple reaction time, 4-choice reaction time, and inspection time. To inquire whether the processing speed tasks might be biomarkers of cognitive aging, we examined the attenuations in their associations with general cognitive ability after adjusting for cognitive ability measured almost 60 years earlier. With the exception of inspection time, the attenuations were substantial. Inspection time was the only processing speed measure--all of which were measured at age 70--whose correlation with cognitive ability at age 70 was significantly greater than the correlation with cognitive ability at age 11. In old age, individual differences in most commonly used measures of processing speed are largely dependent on childhood cognitive ability. For all processing speed tasks, a little variance is left that appears to be related to aging differences. Inspection time, the marker that was least dependent on childhood intelligence, should be considered further as one biomarker of cognitive aging.

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Year:  2010        PMID: 20230141     DOI: 10.1037/a0017750

Source DB:  PubMed          Journal:  Psychol Aging        ISSN: 0882-7974


  56 in total

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6.  Digit Symbol Substitution test and future clinical and subclinical disorders of cognition, mobility and mood in older adults.

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8.  Genetic architecture of context processing in late middle age: more than one underlying mechanism.

Authors:  William S Kremen; Matthew S Panizzon; Hong Xian; Deanna M Barch; Carol E Franz; Michael D Grant; Rosemary Toomey; Michael J Lyons
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9.  Patterns of cognitive function in aging: the Rotterdam Study.

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10.  Subclinical cognitive decline in middle-age is associated with reduced task-induced deactivation of the brain's default mode network.

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