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基于梯度提升决策树算法与神经影像学的抑郁症个性化治疗

Gradient boosting decision-tree-based algorithm with neuroimaging for personalized treatment in depression.

作者信息

Ali Farzana Z, Wengler Kenneth, He Xiang, Nguyen Minh Hoai, Parsey Ramin V, DeLorenzo Christine

机构信息

Department of Biomedical Engineering, Stony Brook University, Stony Brook, NY, USA.

Department of Psychiatry, Columbia University and New York State Psychiatric Institute, New York, NY, USA.

出版信息

Neurosci Inform. 2022 Dec;2(4). doi: 10.1016/j.neuri.2022.100110. Epub 2022 Nov 11.

Abstract

INTRODUCTION

Pretreatment positron emission tomography (PET) with 2-deoxy-2-[F]fluoro-D-glucose (FDG) and magnetic resonance spectroscopy (MRS) may identify biomarkers for predicting remission (absence of depression). Yet, no such image-based biomarkers have achieved clinical validity. The purpose of this study was to identify biomarkers of remission using machine learning (ML) with pretreatment FDG-PET/MRS neuroimaging, to reduce patient suffering and economic burden from ineffective trials.

METHODS

This study used simultaneous PET/MRS neuroimaging from a double-blind, placebo-controlled, randomized antidepressant trial on 60 participants with major depressive disorder (MDD) before initiating treatment. After eight weeks of treatment, those with ≤ 7 on 17-item Hamilton Depression Rating Scale were designated as remitters (free of depression, 37%). Metabolic rate of glucose uptake (metabolism) from 22 brain regions were acquired from PET. Concentrations (mM) of glutamine and glutamate and gamma-aminobutyric acid (GABA) in anterior cingulate cortex were quantified from MRS. The data were randomly split into 67% train and cross-validation ( = 40), and 33% test ( = 20) sets. The imaging features, along with age, sex, handedness, and treatment assignment (selective serotonin reuptake inhibitor or SSRI vs. placebo) were entered into the eXtreme Gradient Boosting (XGBoost) classifier for training.

RESULTS

In test data, the model showed 62% sensitivity, 92% specificity, and 77% weighted accuracy. Pretreatment metabolism of left hippocampus from PET was the most predictive of remission.

CONCLUSIONS

The pretreatment neuroimaging takes around 60 minutes but has potential to prevent weeks of failed treatment trials. This study effectively addresses common issues for neuroimaging analysis, such as small sample size, high dimensionality, and class imbalance.

摘要

引言

使用2-脱氧-2-[F]氟-D-葡萄糖(FDG)进行的预处理正电子发射断层扫描(PET)和磁共振波谱(MRS)可能会识别出用于预测缓解(无抑郁)的生物标志物。然而,尚无此类基于图像的生物标志物获得临床有效性。本研究的目的是使用机器学习(ML)结合预处理FDG-PET/MRS神经影像学来识别缓解的生物标志物,以减轻无效试验给患者带来的痛苦和经济负担。

方法

本研究使用了来自一项双盲、安慰剂对照、随机抗抑郁试验的同步PET/MRS神经影像学数据,该试验针对60名重度抑郁症(MDD)患者在开始治疗前进行。治疗八周后,17项汉密尔顿抑郁量表评分≤7分的患者被指定为缓解者(无抑郁,37%)。从PET获取22个脑区的葡萄糖摄取代谢率(代谢)。从前扣带回皮层的MRS中量化谷氨酰胺、谷氨酸和γ-氨基丁酸(GABA)的浓度(mM)。数据被随机分为67%的训练集和交叉验证集(n = 40)以及33%的测试集(n = 20)。将成像特征以及年龄、性别、利手和治疗分配(选择性5-羟色胺再摄取抑制剂或SSRI与安慰剂)输入极端梯度提升(XGBoost)分类器进行训练。

结果

在测试数据中,该模型显示出62%的敏感性、92%的特异性和77%的加权准确率。PET显示的左侧海马体的预处理代谢对缓解的预测性最强。

结论

预处理神经影像学检查大约需要60分钟,但有潜力避免数周的治疗试验失败。本研究有效地解决了神经影像学分析中的常见问题,如样本量小、维度高和类别不平衡。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/51c0/9873411/4a36e5824a58/nihms-1864649-f0001.jpg

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