| Literature DB >> 27923525 |
Andrea Mechelli1, Ashleigh Lin2, Stephen Wood3, Patrick McGorry4, Paul Amminger4, Stefania Tognin5, Philip McGuire5, Jonathan Young6, Barnaby Nelson4, Alison Yung7.
Abstract
Recent studies have reported an association between psychopathology and subsequent clinical and functional outcomes in people at ultra-high risk (UHR) for psychosis. This has led to the suggestion that psychopathological information could be used to make prognostic predictions in this population. However, because the current literature is based on inferences at group level, the translational value of the findings for everyday clinical practice is unclear. Here we examined whether psychopathological information could be used to make individualized predictions about clinical and functional outcomes in people at UHR. Participants included 416 people at UHR followed prospectively at the Personal Assessment and Crisis Evaluation (PACE) Clinic in Melbourne, Australia. The data were analysed using Support Vector Machine (SVM), a supervised machine learning technique that allows inferences at the individual level. SVM predicted transition to psychosis with a specificity of 60.6%, a sensitivity of 68.6% and an accuracy of 64.6% (p<0.001). In addition, SVM predicted functioning with a specificity of 62.5%, a sensitivity of 62.5% and an accuracy of 62.5% (p=0.008). Prediction of transition was driven by disorder of thought content, attenuated positive symptoms and functioning, whereas functioning was best predicted by attention disturbances, anhedonia-asociality and disorder of thought content. These results indicate that psychopathological information allows individualized prognostic predictions with statistically significant accuracy. However, this level of accuracy may not be sufficient for clinical translation in real-world clinical practice. Accuracy might be improved by combining psychopathological information with other types of data using a multivariate machine learning framework.Entities:
Keywords: Clinical outcome; Functional outcome; Psychosis; Support vector machine; Ultra-high risk
Mesh:
Year: 2016 PMID: 27923525 PMCID: PMC5477095 DOI: 10.1016/j.schres.2016.11.047
Source DB: PubMed Journal: Schizophr Res ISSN: 0920-9964 Impact factor: 4.939
Fig. 1Relative contributions of clinical measures to prediction of long-term clinical outcome (i.e. converters versus non-converters). A positive weight value indicates that a measure contains valuable information for identifying converters, whereas a negative value indicates that it contains valuable information for identifying non-converters.
Demographic and clinical characteristics of participants. The participants used for the analysis of functioning were a subset of the participants used for the analysis of transition. Values denote mean with standard error in brackets. n = number of subjects in each group; UHR-T = individuals at ultra-high risk who made transition to psychosis; UHR-T = individuals at ultra-high risk who did not make transition to psychosis; Poor = individuals who showed a SOFAS score ≤ 50 at follow-up indicating poor functioning; Good = individuals who showed a SOFAS score > 50 at follow-up indicating good functioning. The asterisk (*) indicates that this information was available for 75/98 individuals who made transition and 77/98 who did not make transition to psychosis.
| Prediction of transition | Prediction of functioning | |||||
|---|---|---|---|---|---|---|
| UHR-T | UHR-NT | Comparison | Low | High | Comparison | |
| Age | 19.52 (3.62) | 19.40 | 19.71 (3.06) | 19.65 (3.62) | ||
| Gender (male/female) | 48/51 | 48/51 | 22/26 | 22/26 | ||
| Time between baseline assessment and follow-up (days) | 3203.19 (1020.341) | 2965.79 (1194.932) | 2833.44 (1262.114) | 2630.33 (1061.003) | ||
| Psychotic subscale (BPRS) | 10.11 (3.2) | 8.63 (2.67) | 10.29 (3.3) | 9.69 (2.86) | ||
| Alogia (SANS) | 2.57 (2.85) | 1.99 (2.38) | 3.44 (3.16) | 2.13 (1.86) | ||
| Avolition (SANS) | 4.57 (3.36) | 3.65 (2.88) | 4.92 (3.29) | 3.90 (3.18) | ||
| Anhedonia–Asociality (SANS) | 6.78 (4.92) | 5.44 (4.65) | 7.65 (5.15) | 5.19 (3.78) | ||
| Attention (SANS) | 2.03 (2.17) | 1.28 (1.8) | 2.48 (2.35) | 0.96 (1.28) | ||
| GAF | 54.54 (11.31) | 61.10 (11.81) | 55.27 (11.2) | 58.96 (9.51) | ||
| Disorder of thought content | 2.29 (0.95) | 1.66 (1.05) | 2.19 (0.86) | 1.85 (1.03) | ||
| Perceptual abnormalities | 2.45 (1.45) | 2.11 (1.44) | 2.42 (1.36) | 2.40 (1.55) | ||
| Conceptual disorganisation | 2.04 (1.02) | 1.73 (1.15) | 2.00 (1.05) | 1.69 (1.05) | ||
| Motor disturbances | 0.75 (1.06) | 0.61 (1.01) | 0.69 (1.03) | 0.67 (1.07) | ||
| Disorder of concentration, attention and memory (CAARMS) | 2.18 (1.19) | 1.92 (1.14) | 2.21 (1.23) | 2.23 (0.973) | ||
| Disorder of emotion and affect | 1.82 (1.32) | 1.54 (1.28) | 2.04 (1.32) | 1.83 (1.13) | ||
| Impaired energy | 1.92 (1.18) | 1.90 (1.12) | 1.83 (1.13) | 1.97 (1.02) | ||
| Impaired tolerance to normal stress | 1.95 (1.25) | 1.79 (1.18) | 1.90 (1.20) | 2.00 (1.07) | ||
| Impaired bodily sensation | 0.96 (1.25) | 0.70 (1.06) | 0.60 (1.10) | 1.04 (1.12) | ||
| Impaired autonomic functioning | 1.04 (1.25) | 0.84 (1.13) | 1.21 (1.23) | 1.21 (1.23) | ||
Fig. 2Relative contributions of clinical measures to prediction of long-term functional outcome (i.e. poor versus good functioning). A positive weight value indicates that a measure contains valuable information for identifying low-functioning individuals, whereas a negative value indicates that it contains valuable information for identifying high-functioning individuals.