| Literature DB >> 34682531 |
Mario Fernando Jojoa-Acosta1, Sara Signo-Miguel2, Maria Begoña Garcia-Zapirain1, Mercè Gimeno-Santos2, Amaia Méndez-Zorrilla1, Chandan J Vaidya3, Marta Molins-Sauri2, Myriam Guerra-Balic2, Olga Bruna-Rabassa2.
Abstract
The study of executive function decline in adults with Down syndrome (DS) is important, because it supports independent functioning in real-world settings. Inhibitory control is posited to be essential for self-regulation and adaptation to daily life activities. However, cognitive domains that most predict the capacity for inhibition in adults with DS have not been identified. The aim of this study was to identify cognitive domains that predict the capacity for inhibition, using novel data-driven techniques in a sample of adults with DS (n = 188; 49.47% men; 33.6 ± 8.8 years old), with low and moderate levels of intellectual disability. Neuropsychological tests, including assessment of memory, attention, language, executive functions, and praxis, were submitted to Random Forest, support vector machine, and logistic regression algorithms for the purpose of predicting inhibition capacity, assessed with the Cats-and-Dogs test. Convergent results from the three algorithms show that the best predictors for inhibition capacity were constructive praxis, verbal memory, immediate memory, planning, and written verbal comprehension. These results suggest the minimum set of neuropsychological assessments and potential intervention targets for individuals with DS and ID, which may optimize potential for independent living.Entities:
Keywords: Down syndrome; aging; artificial intelligence; cognition; executive functions; feature selection; inhibition; machine learning; neuropsychology
Mesh:
Year: 2021 PMID: 34682531 PMCID: PMC8536074 DOI: 10.3390/ijerph182010785
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Neuropsychological tests to perform the cognitive assessment of adults with DS [51].
| Cognitive Domains | Instruments | Acronyms of Variables Names |
|---|---|---|
| General cognitive performance | Scale color progressive matrices of RAVEN (RCPM) [ | Raven |
| Memory (immediate, verbal memory, visual memory and visual recognition memory) | Memory of images (ad hoc) | Mem_ima |
| Image recognition (ad hoc) | Mem_recog | |
| Verbal Memory 1a and 1b [ | Mem_verbal | |
| Attention (attention and verbal short-term memory) | Direct digits (K-ABC) [ | Direct_D |
| Language and communication (receptive vocabulary, denomination, spontaneous language and verbal fluency) | Peabody Picture Vocabulary Test (PPVT) [ | PPVT |
| Visio-verbal denomination (ad hoc) | Total_denomin | |
| Spontaneous language: description of a sheet [ | Spont_lang | |
| Verbal fluency: categorical evocation [ | Verbal_flu | |
| Oral verbal comprehension (ad hoc) | OV_compr | |
| Written verbal comprehension [ | WV_compr | |
| Executive functions (executive function, processing speed, planning and motor execution) | Cats-and-Dogs test [ | EF |
| Clock test [ | Clock_order // Clock_copy | |
| Motor execution 1 | Mot_ex1 | |
| Motor execution 2 | Mot_ex2 | |
| Overall motor execution [ | Overall_ME | |
| Mental control—numbers | Mental_contr_num | |
| Mental control—days | Mental_contr_days | |
| Overall mental control [ | Overall_mental_contr | |
| Praxis (visio-constructive ability, imitation of postures, ability to imitate) | Constructive praxis [ | Constr_praxis |
| Orientation (time, place, person) | Orientation in person (ad hoc) | OP |
| Orientation in space (ad hoc) | OS | |
| Orientation in time (ad hoc) | OT | |
| Writing | Graphics | Graphics |
Description of the fields with missing values.
| Variable Name | Amount of Missing Information |
|---|---|
| Spont_lang | 1 |
| Direct_D | 2 |
| Span | 6 |
| Deno_obj_body | 1 |
| Graphics | 6 |
| Mem_ima | 1 |
| Mem_recog | 1 |
| Errors | 2 |
| OV_comp | 1 |
| WV_comp | 26 |
| Mental_contr_num | 1 |
| Mental_contr_days | 1 |
| Overall_mental_contr | 1 |
| Mem_verbal | 1 |
| Imi_post | 8 |
| EF | 4 |
| Secs | 5 |
| Raven | 3 |
| Verbal_flu | 3 |
| PPVT | 1 |
| Clock_copy | 3 |
| ZEF | 4 |
| PE_EF | 4 |
| Category_EF | 4 |
| Category_EF_2 | 4 |
| Z_secs_EF | 5 |
| PE_secs_EF_2 | 5 |
| Categories_secs_EF | 5 |
| Categories_secs_EF_2 | 5 |
Figure 1Block diagram of the proposed automatic variable selection model.
Figure 2Block diagram of the steps to select the correlated variables.
Figure 3Model to detect the importance of the variables based on the decision trees used.
Data recovered from the database for machine learning analysis.
| Description | Amount |
|---|---|
| Total complete data | 7218 |
| Total data recovered | 114 |
| Total data available for processing | 7332 |
| Total variables | 39 |
| Total registers | 188 |
Mean absolute percentage error, MAPE, obtained for the recovery of missing data with the test dataset.
| Variable Name | Amount of Recovered Data | Mean Absolute Percentage Error in Testing |
|---|---|---|
| Spont_lang | 1 | 95.77% |
| Direct_D | 2 | 98.61% |
| Span | 6 | 99.06% |
| Deno_obj_body | 1 | 95.27% |
| Graphics | 6 | 99.68% |
| Mem_ima | 1 | 96.3% |
| Mem_recog | 1 | 99.9% |
| Errors | 2 | 97.28% |
| OV_comp | 1 | 97.62% |
| WV_comp | 26 | 96.92% |
| Mental_contr_num | 1 | 95.38% |
| Mental_contr_days | 1 | 95.07% |
| Overall_mental_contr | 1 | 96.67% |
| Mem_verbal | 1 | 99.19% |
| Imi_post | 8 | 98.56% |
| EF | 4 | 95.61% |
| Secs | 5 | 95.28% |
| Raven | 3 | 97.44% |
| Verb_flu | 3 | 96.49% |
| PPVT | 1 | 95.13% |
| Clock_copy | 3 | 96.84% |
| ZEF | 4 | 98.69% |
| PE_EF | 4 | 96.91% |
| Category_EF | 4 | 96.38% |
| Category_EF_2 | 4 | 99.98% |
| Z_secs_EF | 5 | 95.56% |
| PE_secs_EF_2 | 5 | 96.38% |
| Categorias_secs_EF | 5 | 98.86% |
| Categories_secs_EF_2 | 5 | 95.2% |
Removal of variables based on the Pearson correlation coefficient.
| Threshold | Variable 1 | Variable 2 | Removed Variable |
|---|---|---|---|
| 0.9 | OT | OS | OT |
| Mental_contr_num | Overall_mental_contr | Mental_contr_num | |
| Mental_contr_days | Overall_mental_contr | Menta_contr_daysl | |
| 0.8 | mot_ex1 | Overall_ME | Mot_ex1 |
| Mot_ex2 | Total_EM | Mot_ex2 | |
| auto_leng_total | auto_leng_months | auto_leng_months | |
| 0.7 | Age | Age_groups | Age_groups |
| Direct_D | Span | Direct_D | |
| OS | OT | OT | |
| Total_O | OS | OS | |
| auto_leng_num | Total_leng_auto | auto_leng_num |
Automatic selection of variables important for EF prediction.
| Variables Selected in the Subset of Variables with <0.9 Pearson Correlation Tolerance between Variables | Variables Selected in the Subset of Variables with <0.8 Pearson Correlation Tolerance between Variables | Variables Selected in the Subset of Variables with <0.7 Pearson Correlation Tolerance between Variables |
|---|---|---|
| Imi_post | OV_compr | Overall_ME |
| Mem_verbal | Mem_verbal | OV_compr |
| Direct_D | Overall_mental_contr | Span |
| Constr_praxis | Direct_D | Clock_copy |
| Clock_copy | Constr_praxis | Const_praxis |
| Errors | Errors | Total_leng_auto |
| WV_compr | WV_compr | Ide_praxis |
Automatic selection of variables important for EF prediction based on weights.
| Variables with Correlation under 0.9 | Weight | Variables with Correlation under 0.8 | Weight | Variables with Correlation under 0.7 | Weight |
|---|---|---|---|---|---|
| Constr_praxis | 56 | Constr_praxis | 56 | Constr_praxis | 48 |
| Mem_verbal | 45 | Mem_verbal | 46 | Mem_verbal | 40 |
| Direct_D | 45 | VW_compr | 41 | Clock_copy | 36 |
| OP | 32 | Raven | 33 | Mem_recog | 34 |
| Mem_recog | 32 | Direct_D | 33 | OP | 33 |
| Raven | 31 | Secs | 33 | Secs | 33 |
| Secs | 31 | OP | 32 | Raven | 32 |
| Age | 28 | Mem_recog | 29 | PPVT | 32 |
| PPVT | 26 | Age | 27 | Age | 29 |
| Total_denomin | 24 | PPVT | 26 | Spont_lang | 29 |
| Clock_copy | 24 | Total_denomin | 26 | Total_denomin | 27 |
| Verbal_flu | 23 | OS | 26 | Clock_order | 26 |
| VW_compr | 22 | Clock_order | 24 | Verb_flu | 25 |
| Clock_order | 22 | Verbal_flu | 24 | VW_compr | 24 |
| Imi_post | 19 | Imi_post | 19 | Imi_post | 19 |
| Spont_lang | 19 | Clock_copy | 18 | Ide_praxis | 19 |
| Imi_post | 19 | auto_leng_num | 17 | Overall_ME | 19 |
| auto_leng_num | 17 | Imi_post | 17 | OV_compr | 17 |
| Ide_praxis | 16 | Overall_EM | 16 | Span | 17 |
| Overall_ME | 16 | Ide_praxis | 14 | Gender | 15 |
Comparison of performance as regards the balanced accuracy of the models used.
| Model | Subset Variables Correlation <0.7 | Subset Variables Correlation <0.8 | Subset Variables Correlation <0.9 | ||||||
|---|---|---|---|---|---|---|---|---|---|
| Metric | Acc | F1 | AUC | Acc | F1 | AUC | Acc | F1 | AUC |
| Random Forest | 73.6% | 68.0% | 74.4% |
|
|
| 84.2% | 81.0% | 85.4% |
| Logistic regression | 71.0% | 61.5% | 63.3% | 73.6% | 66.1% | 69.6% | 71.0% | 67.0% | 77.0% |
| Support vector machine | 57.8% | 51.0% | 55.0% | 55.2% | 47.5% | 51.6% | 60.5% | 58.1% | 70.4% |