| Literature DB >> 28861763 |
Mon-Ju Wu1,2, Benson Mwangi3, Ives Cavalcante Passos3, Isabelle E Bauer3, Bo Cao3, Thomas W Frazier4, Giovana B Zunta-Soares3, Jair C Soares3.
Abstract
Bipolar disorder (BD) is a common disorder with high reoccurrence rate in general population. It is critical to have objective biomarkers to identify BD patients at an individual level. Neurocognitive signatures including affective Go/No-go task and Cambridge Gambling task showed the potential to distinguish BD patients from health controls as well as identify individual siblings of BD patients. Moreover, these neurocognitive signatures showed the ability to be replicated at two independent cohorts which indicates the possibility for generalization. Future studies will examine the possibility of combining neurocognitive data with other biological data to develop more accurate signatures.Entities:
Keywords: Bipolar disorder; CANTAB; Machine learning; Neurocognition; Vulnerability
Year: 2017 PMID: 28861763 PMCID: PMC5578943 DOI: 10.1186/s40345-017-0101-9
Source DB: PubMed Journal: Int J Bipolar Disord ISSN: 2194-7511
Cognitive tasks and measurements
| No. | CANTAB task | Evaluation | Measurements |
|---|---|---|---|
| 1 | Affective Go/No-Go | Inhibition control | Reaction time*, accuracy |
| 2 | Big/Little Circle | Comprehension, learning and reversal | Reaction time*, accuracy |
| 3 | Cambridge Gambling Task | Risk-taking behavior | Reaction time*, accuracy, proportion bets across trials with more/equally/less likely outcome |
| 4 | Choice Reaction Time | Simple (motor) processing speed | Reaction time*, accuracy |
| 5 | Motor Screening | Simple (motor) processing speed | Reaction time* |
| 6 | Match to Sample Visual Search | Ability to match motor and visual stimuli | Reaction time*, accuracy |
| 7 | Rapid Visual Processing | Sustained attention | Reaction time*, accuracy |
| 8 | Spatial Recognition Memory | Visual spatial recognition memory | Reaction time*, accuracy |
| 9 | Spatial Span task | Spatial working memory | Span length, number of attempts, reaction times* |
*Reaction time is in milliseconds
Fig. 1A flow diagram showing the signature discovery and replication stages
Fig. 2a A ‘confusion matrix’ depicting actual and LASSO predicted diagnostic labels in the discovery cohort. b A comparison of predicted probability scores between BD patients and HCs in the discovery cohort. c A bootstrapping calculation was performed to estimate distribution of the mean predicted probability for BD patients and HCs in the discovery cohort
Fig. 3a A bar graph showing LASSO algorithm coefficients assigned to the most relevant CANTAB neurocognitive measurements. AGN ON affective Go/No go task total omission with negative stimuli, SRM ML spatial recognition memory task mean latency, CGT DA Cambridge gambling task delay aversion, CGT RA Cambridge gambling task risk adjustment, RVP TH rapid visual processing task total hits. These neurocognitive variables were assigned as non-zero coefficients during algorithm training. Positive coefficients represent increased neurocognitive scores in BD patients as compared to HCs and vice versa. b A bar graph comparing CGT RA scores from the discovery cohort. c A three-group (HCs, SIs, BD) comparison of CGT RA scores in the replication cohort
Fig. 4a A ‘confusion matrix’ representing actual and predicted patient and HCs labels in the replication cohort. b A receiver operating characteristic (ROC) curve depicting the algorithm’s performance in distinguishing BD patients from HCs in the replication cohort. c A bar graph comparing predicted probability scores between HCs, SIs, and BD patients HCs in the replication cohort. d A bootstrapping calculation was used to estimate the distribution of the mean predicted probability scores for BD patients, SIs, and HCs