Greenstein Deanna, Kataria Rachna, Gochman Peter, Dasgupta Abhijit, Malley James D, Rapoport Judith, Gogtay Nitin
1 Child Psychiatry Branch, National Institute of Mental Health (NIMH)/National Institutes of Health (NIH) , Bethesda, Maryland.
J Child Adolesc Psychopharmacol. 2014 Sep;24(7):366-73. doi: 10.1089/cap.2013.0139. Epub 2014 Jul 14.
Among children <13 years of age with persistent psychosis and contemporaneous decline in functioning, it is often difficult to determine if the diagnosis of childhood onset schizophrenia (COS) is warranted. Despite decades of experience, we have up to a 44% false positive screening diagnosis rate among patients identified as having probable or possible COS; final diagnoses are made following inpatient hospitalization and medication washout. Because our lengthy medication-free observation is not feasible in clinical practice, we constructed diagnostic classifiers using screening data to assist clinicians practicing in the community or academic centers.
We used cross-validation, logistic regression, receiver operating characteristic (ROC) analysis, and random forest to determine the best algorithm for classifying COS (n=85) versus histories of psychosis and impaired functioning in children and adolescents who, at screening, were considered likely to have COS, but who did not meet diagnostic criteria for schizophrenia after medication washout and inpatient observation (n=53). We used demographics, clinical history measures, intelligence quotient (IQ) and screening rating scales, and number of typical and atypical antipsychotic medications as our predictors.
Logistic regression models using nine, four, and two predictors performed well with positive predictive values>90%, overall accuracy>77%, and areas under the curve (AUCs)>86%.
COS can be distinguished from alternate disorders with psychosis in children and adolescents; greater levels of positive and negative symptoms and lower levels of depression combine to make COS more likely. We include a worksheet so that clinicians in the community and academic centers can predict the probability that a young patient may be schizophrenic, using only two ratings.
在13岁以下患有持续性精神病且功能同时出现衰退的儿童中,往往难以确定是否有必要诊断为儿童期起病的精神分裂症(COS)。尽管有几十年的经验,但在被确定为可能患有或疑似患有COS的患者中,我们的筛查诊断假阳性率高达44%;最终诊断是在住院治疗和药物洗脱后做出的。由于我们长时间的无药观察在临床实践中不可行,我们利用筛查数据构建诊断分类器,以协助在社区或学术中心工作的临床医生。
我们使用交叉验证、逻辑回归、受试者工作特征(ROC)分析和随机森林来确定最佳算法,以区分COS患者(n = 85)与在筛查时被认为可能患有COS,但在药物洗脱和住院观察后不符合精神分裂症诊断标准的儿童和青少年的精神病及功能受损病史(n = 53)。我们将人口统计学、临床病史指标、智商(IQ)和筛查评定量表,以及典型和非典型抗精神病药物的使用数量作为预测指标。
使用九个、四个和两个预测指标的逻辑回归模型表现良好,阳性预测值>90%,总体准确率>77%,曲线下面积(AUC)>86%。
可以将儿童和青少年的COS与其他伴有精神病的疾病区分开来;更高水平的阳性和阴性症状以及更低水平的抑郁共同表明更有可能患有COS。我们提供了一个工作表,以便社区和学术中心的临床医生仅使用两项评定就能预测年轻患者患精神分裂症的可能性。