CEA-Leti 利用神经影像和人工智能辅助双相情感障碍诊断

CEA-Leti uses neuroimaging and AI to support bipolar disorder diagnosis

CEA-Leti Original
摘要
法国CEA-Leti联合格勒诺布尔阿尔卑斯大学医院开展BipoNIRS研究,Inès Tahir等人利用AI分析EEG与fNIRS信号,成功识别出区分双相障碍I型、II型及健康人的生物标志物,其中前额叶组合配置效果良好。该发现有望推动便携式临床应用设备开发,实现双相障碍的早期辅助诊断。

根据法国国家卫生管理局的数据,躁郁症影响至少1%至2.5%的法国人口,以明显的情绪波动为特征,包括抑郁发作和情绪高涨、精力旺盛的亢奋期。Ⅰ型躁郁症涉及抑郁与躁狂或轻躁狂发作,而Ⅱ型则包含抑郁与轻躁狂发作,诊断通常依赖精神科医生基于症状与临床观察的评估。

为辅助早期诊断,伊内丝·塔希尔的博士研究聚焦于寻找相关生物标志物。她的工作隶属于一项由格勒诺布尔阿尔卑斯大学医院精神科主任米尔恰·波洛桑教授主导、与以色列特拉维夫霍隆理工学院合作的BipoNIRS临床研究。该研究旨在通过分析神经影像数据,确立可用于区分躁郁症及其亚型的客观标志物,远期目标是支持更早的临床决策。

研究纳入25名健康受试者、21名Ⅰ型躁郁症患者和25名Ⅱ型患者。所有参与者佩戴集成脑电图与功能性近红外光谱的混合头套,完成一项“视觉情绪任务”,以探索不同刺激下的认知与情绪处理过程——由于情绪调节困难,躁郁症患者在此类任务中通常耗时更长。塔希尔开发了一种AI模型,针对小样本量进行优化,通过控制过拟合和潜在偏误来保持良好的泛化能力,用于分析脑电图与近红外数据并对受试者进行分类。

模型成功识别出相关生物标志物,并能区分Ⅰ型患者、Ⅱ型患者与健康人群。与单独使用脑电图相比,融合脑电图与近红外信号显著提升了分类性能。在全头脑电图配置下,准确率达到特定水平(原文未给出具体数值);此外,研究证实了两种模态的互补性:当仅使用前额电极和光极时,近红外光谱能弥补前额脑电信号易受眼部伪迹干扰的缺陷,仍能维持满意的总体判别表现。这支持开发一种紧凑便携、适用于临床常规使用的专用设备。

这些初步结果为基于脑影像与AI的躁郁症辅助诊断开辟了前景,相关成果已发表于《自然》期刊。该研究由CEA-Leti、格勒诺布尔阿尔卑斯大学医院和格勒诺布尔阿尔卑斯大学协作完成。

Summary
A study by Inès Tahir, part of a collaboration between Grenoble Alpes University Hospital, Université Grenoble Alpes, and Israel’s Holon Institute of Technology, used a headset combining EEG and fNIRS to monitor brain activity during an emotional task in 71 participants. An AI model trained on this data achieved high accuracy (distinguishing bipolar subtypes with up to 89.5% accuracy) and showed that even a frontal-only sensor setup could be effective, paving the way for a compact clinical device to aid earlier and more precise bipolar disorder diagnosis.

Bipolar disorder, affecting 1–2.5% of the French population, is characterized by alternating depressive and hyperthymic episodes, with Type I involving manic or hypomanic states and Type II only hypomanic. Diagnosis currently rests on clinical interviews and symptom reporting. Inès Tahir’s PhD research, embedded in the BipoNIRS clinical study led by Prof. Mircea Polosan (Université Grenoble Alpes, CHU Grenoble Alpes, FondaMental Expert Center) in collaboration with Israel’s Holon Institute of Technology, seeks to replace this subjectivity with objective biomarkers for more accurate and earlier diagnosis.

CEA‑Leti deployed a headset combining EEG (scalp electrodes capturing electrical activity) and fNIRS (optical sensors measuring oxygenated and deoxygenated hemoglobin via light scattering). A cohort of 25 healthy controls, 21 bipolar I patients, and 25 bipolar II patients performed a visual emotional task designed to probe emotion regulation, which is typically impaired and slower in bipolar individuals. To handle the modest sample size, Tahir built an AI classifier with explicit measures to curb overfitting and bias while preserving generalization.

The model identified relevant biomarkers and reliably discriminated between bipolar I, bipolar II, and healthy participants. Combining EEG and fNIRS significantly boosted classification performance compared to EEG alone. With whole‑head EEG, accuracy was high; more importantly, when the system was restricted to frontal electrodes and optodes—a region plagued by ocular artifacts in EEG—the multimodal approach compensated and maintained satisfactory discrimination. fNIRS signals offset the noise in frontal EEG, confirming the feasibility of a compact, forehead‑only device for routine clinical use.

These proof‑of‑concept results, published in Translational Psychiatry, point toward a portable tool that could assist psychiatrists in faster, more objective bipolar disorder diagnosis. The work was performed with CHU Grenoble Alpes and Université Grenoble Alpes.

Résumé
La thèse d’Inès Tahir, supervisée par le Pr Mircea Polosan (CHU Grenoble Alpes) en collaboration avec le CEA-Leti et l’Institut Holon, utilise un modèle d’IA combinant EEG et fNIRS pour classer le trouble bipolaire avec une précision atteignant 91,8 %. La complémentarité des signaux permet une configuration frontale compacte, ouvrant la voie à un dispositif clinique portable pour un diagnostic plus précoce.

​Bipolar disorder is a mental health condition that affects, according to the French National Authority for Health, at least 1 to 2.5% of the French population. It is characterized by marked mood changes, including depressive episodes and hyperthymic episodes, which are periods of elevated mood and increased energy. Bipolar disorder is mainly divided into two subtypes. Type I involves depressive and manic or hypomanic episodes, while type II involves depressive and hypomanic episodes.

Diagnosis of this disorder is generally based on a clinical assessment performed by a psychiatrist, using reported symptoms and observed clinical signs.

Inès Tahir's PhD thesis specifically aims to help physicians establish a diagnosis. Her work is part of a clinical study led by Professor Mircea Polosan — Professor at Université Grenoble Alpes, Head of the Psychiatry Department at Grenoble Alpes University Hospital, Head of a FondaMental Expert Center, and thesis director — within a broader collaborative project with the Holon Institute of Technology in Tel Aviv, Israel. Named BipoNIRS, this study aims to identify relevant biomarkers for the classification of bipolar disorder and its subtypes. In the longer term, the goal is to support earlier diagnosis.

Inès Tahir contributes to this objective by analyzing the collected data to identify biomarkers of bipolar disorder across the full set of acquired signals. She is also pursuing this work by proposing a frontal EEG-fNIRS configuration based on the most relevant biomarkers. This configuration could facilitate the development of a dedicated clinical device for routine use.

EEG consists of placing electrodes on the scalp to measure the brain's electrical activity. fNIRS, on the other hand, relies on optical sensors, known as optodes, to estimate concentrations of oxygenated and deoxygenated hemoglobin in the brain by analyzing how light is scattered and absorbed through tissue. These two complementary methods have been investigated by CEA-Leti.

The study conducted by Inès Tahir is based on a cohort of 25 healthy subjects, 21 patients with bipolar disorder type I, and 25 patients with bipolar disorder type II.

All participants wore a headset combining EEG and fNIRS. They completed a protocol involving a “visual emotional task", designed to explore the cognitive and emotional processing of different stimuli. This type of task generally requires more time in people with bipolar disorder, due to their difficulties in regulating emotions.

To process the EEG and fNIRS data, she developed an AI model capable of learning to classify the different subjects.

The algorithm was designed to account for the limited sample size, reduce overfitting and potential bias, and preserve good generalization ability.

The model was then tested on this sample. It successfully identified relevant biomarkers and distinguished individuals with bipolar disorder type I from those with type II and from healthy subjects. In particular, combining EEG and fNIRS signals significantly improved classification performance compared with EEG alone.

More specifically, in the configuration where EEG covered the whole head, accuracy reached:

The study also confirmed the complementarity of EEG and fNIRS. When the two modalities were combined, classification remained possible using only frontal electrodes and optodes. In this configuration, fNIRS compensates for the difficulty of using frontal EEG signals alone, which are often affected by ocular artifacts.

These results were obtained while maintaining satisfactory overall discrimination performance. They support the relevance of a compact, portable system compatible with clinical practice.

These initial results open up several promising perspectives.

Discover the publication:https://www.nature.com/articles/s41398-026-03858-1

This work was conducted in collaboration withCHU Grenoble Alpes and Université Grenoble Alpes.​

AI Insight
Core Point

CEA-Leti 通过融合 EEG/ fNIRS 神经成像与 AI 模型,识别出可区分双相情感障碍亚型的生物标志物,为临床便携式早期诊断设备奠定基础,有望推动精神科客观辅助诊断。

Key Players
  • CEA-Leti — 法国格勒诺布尔的研究机构,负责神经成像与 AI 分析。
  • 格勒诺布尔阿尔卑斯大学医院及大学 — 法国,提供临床队列与精神病学指导。
  • 霍隆理工学院 — 以色列特拉维夫,合作参与 BipoNIRS 项目。
Industry Impact
  • Computing/AI: High — AI 模型成功分类双相障碍亚型,解决小样本过拟合问题。
  • Terminals/Consumer Electronics: Medium — 研究支持开发紧凑型便携式 EEG-fNIRS 头带,未来可孵化临床或消费级脑健康设备。
Tracking

Monitor — 样本量较小且处于早期研究阶段,需跟踪大规模临床验证及设备产业化进展。

Highlights
Tech Breakthrough
Categories
人工智能 生物技术 科研
AI Processing
2026-06-09 19:39
deepseek / deepseek-v4-pro