Prediction of relapse in a French cohort of outpatients with schizophrenia (FACE-SZ): Prediction, not association.

IF 3.9 2区 医学 Q1 CLINICAL NEUROLOGY Progress in Neuro-Psychopharmacology & Biological Psychiatry Pub Date : 2025-02-27 DOI:10.1016/j.pnpbp.2025.111304
Susana Barbosa , Ryad Tamouza , Marion Leboyer , Bruno Aouizerate , Christelle Andrieu , Myrtille Andre , Wahid Boukouaci , Delphine Capdevielle , Isabelle Chereau , Julie Clauss Kobayashi , Nathalie Coulon , Jean-Michel Dorey , Laetitia Davidovic , Caroline Dubertret , Eric Fakra , Guillaume Fond , Tudi Goze , Olfa Khalfallah , Sylvain Leignier , Pierre Michel Llorca , Ophélia Godin
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Abstract

Background

Schizophrenia (SZ) commonly manifests through multiple relapses, each impeding the path to recovery and incurring personal and societal costs. Despite the identification of various risk factors associated to the risk of relapse, the development of accurate algorithms predictive of relapse has been limited, partly due to inadequate statistical methods. Additionally, despite the wealth of data showing strong associations between inflammation and schizophrenia, the two existing studies failed to demonstrate whether inflammatory parameters could predict relapse. Our goal is then to identify clinical and inflammatory parameters associated with relapse in schizophrenia and to develop model to predict relapse in each patient.

Methods

We have used classical Cox regression, survival penalized regression, as well as survival random forests to analyze clinical and inflammatory biological data collected in the network of the Schizophrenia Expert Centers in France in which individuals with SZ are clinically assessed and followed up annually for 3 years.

Results

Among 247 individuals with SZ, 71 (29 %) experienced a psychotic relapse during the 3-year follow-up period. The variables most consistently associated with relapses were smoking status, severity of positive symptoms and low global functioning. From a panel of inflammatory parameters, only IL-8 serum levels were associated with time to relapse. The predictive performance, assessed using C-index, was 0.54 using both penalized regression and random forests.

Conclusions

We found several clinical and biological variables consistently associated with relapses across three distinct statistical methods. However, despite these associations, the predictive capacity of these models remained low, highlighting that association does not necessarily mean prediction.
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一项法国精神分裂症门诊患者复发预测(FACE-SZ):预测,而非关联。
精神分裂症(SZ)通常表现为多次复发,每次都会阻碍康复的道路,并产生个人和社会成本。尽管确定了与复发风险相关的各种风险因素,但预测复发的准确算法的发展受到限制,部分原因是统计方法不充分。此外,尽管有大量数据显示炎症与精神分裂症之间存在强烈关联,但现有的两项研究未能证明炎症参数是否可以预测复发。我们的目标是确定与精神分裂症复发相关的临床和炎症参数,并建立预测每位患者复发的模型。方法采用经典Cox回归、生存惩罚回归和生存随机森林分析法国精神分裂症专家中心网络中收集的临床和炎症生物学数据,其中SZ患者进行临床评估并每年随访3年。结果247例SZ患者中,71例(29%)在3年随访期间出现精神病复发。与复发最一致的变量是吸烟状况、阳性症状的严重程度和整体功能低下。从炎症参数组来看,只有IL-8血清水平与复发时间相关。使用c指数评估的预测性能,使用惩罚回归和随机森林均为0.54。结论:通过三种不同的统计方法,我们发现了一些与复发一致相关的临床和生物学变量。然而,尽管存在这些关联,这些模型的预测能力仍然很低,突出表明关联并不一定意味着预测。
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来源期刊
CiteScore
12.00
自引率
1.80%
发文量
153
审稿时长
56 days
期刊介绍: Progress in Neuro-Psychopharmacology & Biological Psychiatry is an international and multidisciplinary journal which aims to ensure the rapid publication of authoritative reviews and research papers dealing with experimental and clinical aspects of neuro-psychopharmacology and biological psychiatry. Issues of the journal are regularly devoted wholly in or in part to a topical subject. Progress in Neuro-Psychopharmacology & Biological Psychiatry does not publish work on the actions of biological extracts unless the pharmacological active molecular substrate and/or specific receptor binding properties of the extract compounds are elucidated.
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