scholarly journals M110. PREDICTING RISK OF PSYCHOSIS IN A GENERAL POPULATION SAMPLE

2020 ◽  
Vol 46 (Supplement_1) ◽  
pp. S176-S177
Author(s):  
Daphne Kounali ◽  
Sarah Sullivan ◽  
Jon Heron ◽  
Jon McLeod ◽  
Mary Cannon ◽  
...  

Abstract Background At present clinical high-risk states for psychosis are determined by specialist mental health services using clinical tools such as the CAARMS, which largely rely on the detection of attenuated psychotic symptoms. However, the positive predictive value (PPV) of the CAARMS for transition to psychosis is only 25% in help seeking populations and as low as 5% in general population, non-help seeking samples. There is therefore a clear need to improve the prediction of psychotic disorder using other (non-symptom related) markers of risk. Our aim was to derive a risk prediction tool to determine risk of psychotic disorder using a large, population-based birth-cohort. Methods We used data from the ALSPAC birth cohort, with data on a comprehensive range of predictors ascertained from early childhood through early adulthood, and on psychotic disorder up to age 24 (imputed up to N≈7000 with any data on psychotic experiences). We use a two-stage risk prediction model, where different sets of predictors are used for outcomes of increasing severity. In the first stage, we predicted a clinical need for care in those who had self-reported psychotic-like experiences prior to age 17 years. We assumed that most of this need for care subsample would be help-seeking and that they therefore provide a more accessible risk-enriched sample for the second stage of our prediction model, where more difficult to measure predictors are included for estimating the risk of new onset psychotic disorder. Here we report on the first stage of our prediction model where we predict a clinical need for care (defined as presence of frequent and distressing interviewer-rated psychotic experiences) at age 17–24 years in participants who self-reported any psychotic-like experiences prior to age 17. The prediction set consisted of sixty-one features across 4 domains: socio-demographic (12 features); cognitive (10 features); non-psychotic psychopathology (24 features); behavioural (10 features). We used machine-learning methods for predictor selection and model fitting, employing resampling to assess and validate model calibration and discrimination. Results 13% of participants who self-reported psychotic experiences by age 17 were found to have a clinical need for care between ages 17–24, and 3.5% met criteria for newly ascertained psychotic disorder at 24 years. Use of two different machine learning methods for feature selection (random forests with a 10-fold cross-validation and elastic nets employing shrinkage) yielded similar results, although the elastic nets/ridge regression produced a more parsimonious model. The features selected included: adolescent self-harm, and childhood IQ, attention, processing speed and external locus of control. The AUC reduced very little compared to that of a model with 61 characteristics. This simpler model showed improved calibration and optimism-corrected predictive performance of AUC=0.73, sensitivity=0.75, specificity=0.60, and PPV=0.22. Discussion Our risk calculator is comparable in performance to those produced in studies of prodromal psychosis in high-risk samples. This first-stage model achieved promising predictive performance. We are currently developing a prognostic score for psychotic disorder in those with a clinical need for care and augment the predictor set with genetic, lipidomic and proteomic markers and further cognitive tests. We will then assess the model’s clinical utility and variation in predictive performance using linkage of ALSPAC data to clinical health care records with the aim to externally validate in other cohort studies.

Author(s):  
Jim van Os ◽  
Annette Schaub ◽  
William T Carpenter

Abstract There has been a major drive in research trying to understand the onset of psychosis. Clinical-high risk (CHR) studies focus on opportunistic help-seeking samples with non-psychotic disorders and a degree of psychosis admixture of variable outcome, but it is unlikely that these represent the population incidence of psychotic disorders. Longitudinal cohort studies of representative samples in the general population have focused on development and outcome of attenuated psychotic symptoms, but typically have low power to detect transition to clinical psychotic disorder. In this issue of Schizophrenia Bulletin, Cupo and colleagues resurrect a time-honored method to examine psychosis onset: the epidemiological follow-back study, modernizing it to fit the research framework of the early intervention era. The authors set out to investigate the hypothesis that psychotic disorder represents the poorest outcome fraction of initially non-psychotic, common mental disorders and present compelling findings, unifying previous opportunistic CHR and representative cohort-based work.


2015 ◽  
Vol 30 (5) ◽  
pp. 648-654 ◽  
Author(s):  
C.M.C. Brett ◽  
E.R. Peters ◽  
P.K. McGuire

AbstractBackgroundThe aims of this study were to identify (1) the factor structure of anomalous experiences across the psychosis continuum; (2) qualitative and quantitative differences in psychotic experiences (PEs) between “non need-for-care” and two clinical groups: psychosis patients and individuals at ultra high risk (UHR) of psychosis. We aimed to distinguish which types of experiences would be related to malign (need-for-care and/or help-seeking) versus benign outcomes.MethodsComponent scores obtained from a Principal Components Analysis of PEs from lifetime scores on the Appraisals of Anomalous Experience Inventory (Brett et al., 2007) were compared across 96 participants: patients diagnosed with a psychotic disorder (n = 37), help-seeking UHR people (n = 21), and non-clinical individuals presenting with enduring PEs (n = 38).ResultsA five-component structure provided the best solution, comprising dissociative-type experiences, subjective cognitive deficits, and three separate components relating to “positive” symptoms. All groups reported “positive” experiences, such as ideas of reference and hallucinations, with the non-clinical group displaying more PEs in the Paranormal/Hallucinatory component than both clinical groups. “Cognitive/Attentional anomalies” was the only component where the clinical groups reported significantly more anomalies than the non-clinical group. However psychosis patients reported more frequent first-rank type symptoms and “hypomanic” type PEs than the other groups.Discussion“Positive” PEs were common across the psychosis spectrum, although first-rank type symptoms were particularly marked in participants diagnosed with a psychotic disorder. Help-seeking and need-for-care were associated with the presence of subjective cognitive disturbances. These findings suggest that anomalies of cognition and attention may be more relevant to poorer outcomes than the presence of anomalous experiences.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Imogen Schofield ◽  
David C. Brodbelt ◽  
Noel Kennedy ◽  
Stijn J. M. Niessen ◽  
David B. Church ◽  
...  

AbstractCushing’s syndrome is an endocrine disease in dogs that negatively impacts upon the quality-of-life of affected animals. Cushing’s syndrome can be a challenging diagnosis to confirm, therefore new methods to aid diagnosis are warranted. Four machine-learning algorithms were applied to predict a future diagnosis of Cushing's syndrome, using structured clinical data from the VetCompass programme in the UK. Dogs suspected of having Cushing's syndrome were included in the analysis and classified based on their final reported diagnosis within their clinical records. Demographic and clinical features available at the point of first suspicion by the attending veterinarian were included within the models. The machine-learning methods were able to classify the recorded Cushing’s syndrome diagnoses, with good predictive performance. The LASSO penalised regression model indicated the best overall performance when applied to the test set with an AUROC = 0.85 (95% CI 0.80–0.89), sensitivity = 0.71, specificity = 0.82, PPV = 0.75 and NPV = 0.78. The findings of our study indicate that machine-learning methods could predict the future diagnosis of a practicing veterinarian. New approaches using these methods could support clinical decision-making and contribute to improved diagnosis of Cushing’s syndrome in dogs.


2021 ◽  
Vol 28 ◽  
Author(s):  
YaMeng Wu ◽  
Yu Sa ◽  
Yu Guo ◽  
QiFeng Li ◽  
Ning Zhang

Background: It is found that the prognosis of gliomas of the same grade has large differences among World Health Organization(WHO) grade II and III in clinical observation. Therefore, a better understanding of the genetics and molecular mechanisms underlying WHO grade II and III gliomas is required, with the aim of developing a classification scheme at the molecular level rather than the conventional pathological morphology level. Method: We performed survival analysis combined with machine learning methods of Least Absolute Shrinkage and Selection Operator using expression datasets downloaded from the Chinese Glioma Genome Atlas as well as The Cancer Genome Atlas. Risk scores were calculated by the product of expression level of overall survival-related genes and their multivariate Cox proportional hazards regression coefficients. WHO grade II and III gliomas were categorized into the low-risk subgroup, medium-risk subgroup, and high-risk subgroup. We used the 16 prognostic-related genes as input features to build a classification model based on prognosis using a fully connected neural network. Gene function annotations were also performed. Results: The 16 genes (AKNAD1, C7orf13, CDK20, CHRFAM7A, CHRNA1, EFNB1, GAS1, HIST2H2BE, KCNK3, KLHL4, LRRK2, NXPH3, PIGZ, SAMD5, ERINC2, and SIX6) related to the glioma prognosis were screened. The 16 selected genes were associated with the development of gliomas and carcinogenesis. The accuracy of an external validation data set of the fully connected neural network model from the two cohorts reached 95.5%. Our method has good potential capability in classifying WHO grade II and III gliomas into low-risk, medium-risk, and high-risk subgroups. The subgroups showed significant (P<0.01) differences in overall survival. Conclusion: This resulted in the identification of 16 genes that were related to the prognosis of gliomas. Here we developed a computational method to discriminate WHO grade II and III gliomas into three subgroups with distinct prognoses. The gene expression-based method provides a reliable alternative to determine the prognosis of gliomas.


2007 ◽  
Vol 38 (8) ◽  
pp. 1203-1210 ◽  
Author(s):  
J. Suvisaari ◽  
L. Häkkinen ◽  
J. Haukka ◽  
J. Lönnqvist

BackgroundPrevious studies suggest that offspring of mothers with psychotic disorders have an almost two-fold higher mortality risk from birth until early adulthood. We investigated predictors of mortality from late adolescence until middle age in offspring of mothers with psychotic disorders.MethodThe Helsinki High-Risk Study follows up offspring (n=337) of women treated for schizophrenia spectrum disorders in mental hospitals in Helsinki before 1975. Factors related to mortality up to 2005 among offspring of these mothers was investigated with a survival model. Hazard rate ratios (HRR) were calculated using sex, diagnosis of psychotic disorder, childhood socio-economic status, maternal diagnosis, and maternal suicide attempts and aggressive symptoms as explanatory variables. The effect of family was investigated by including a frailty term in the model. We also compared mortality between the high-risk group and the Finnish general population.ResultsWithin the high-risk group, females had lower all-cause mortality (HRR 0.43, p=0.05) and mortality from unnatural causes (HRR 0.24, p=0.03) than males. Having themselves been diagnosed with a psychotic disorder was associated with higher mortality from unnatural causes (HRR 4.76, p=0.01), while maternal suicide attempts were associated with higher suicide mortality (HRR 8.64, p=0.03). Mortality in the high-risk group was over two-fold higher (HRR 2.44, p<0.0001) than in the general population, and remained significantly higher when high-risk offspring who later developed psychotic disorders were excluded from the study sample (HRR 2.30, p<0.0001).ConclusionsOffspring of mothers with psychotic disorder are at increased risk of several adverse outcomes, including premature death.


2018 ◽  
Vol 49 (11) ◽  
pp. 1799-1809 ◽  
Author(s):  
Ulrich Reininghaus ◽  
Christian Rauschenberg ◽  
Margreet ten Have ◽  
Ron de Graaf ◽  
Saskia van Dorsselaer ◽  
...  

AbstractBackgroundThe jumping to conclusions (JTC) reasoning bias and decreased working memory performance (WMP) are associated with psychosis, but associations with affective disturbances (i.e. depression, anxiety, mania) remain inconclusive. Recent findings also suggest a transdiagnostic phenotype of co-occurring affective disturbances and psychotic experiences (PEs). This study investigated whether JTC bias and decreased WMP are associated with co-occurring affective disturbances and PEs.MethodsData were derived from the second Netherlands Mental Health Survey and Incidence Study (NEMESIS-2). Trained interviewers administered the Composite International Diagnostic Interview (CIDI) at three time points in a general population sample (N = 4618). The beads and digit-span task were completed to assess JTC bias and WMP, respectively. CIDI was used to measure affective disturbances and an add-on instrument to measure PEs.ResultsCompared to individuals with neither affective disturbances nor PEs, the JTC bias was more likely to occur in individuals with co-occurring affective disturbances and PEs [moderate psychosis (1–2 PEs): adjusted relative risk ratio (RRR) 1.17, 95% CI 0.98–1.41; and high psychosis (3 or more PEs or psychosis-related help-seeking behaviour): adjusted RRR 1.57, 95% CI 1.19–2.08], but not with affective disturbances and PEs alone, whereas decreased WMP was more likely in all groups. There was some evidence of a dose–response relationship, as JTC bias and decreased WMP were more likely in individuals with affective disturbances as the level of PEs increased or help-seeking behaviour was reported.ConclusionThe findings suggest that JTC bias and decreased WMP may contribute to a transdiagnostic phenotype of co-occurring affective disturbances and PEs.


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