--- id: wiki-2026-0508-amygdala-hyperactivity title: Amygdala Hyperactivity category: 10_Wiki/Topics status: verified canonical_id: self aliases: [Amygdala Hyperreactivity, Limbic Hyperactivation] duplicate_of: none source_trust_level: A confidence_score: 0.9 verification_status: applied tags: [neuroscience, anxiety, ptsd, amygdala] raw_sources: [] last_reinforced: 2026-05-10 github_commit: pending tech_stack: language: python framework: nilearn/mne --- # Amygdala Hyperactivity ## 매 한 줄 > **"매 amygdala 의 exaggerated response 의 threat / emotional stimuli — 매 anxiety, PTSD, depression 의 transdiagnostic biomarker."** 매 fMRI BOLD response 의 elevation (특히 face/threat tasks) — 매 prefrontal regulation 의 hypoactivity 와 pair — 매 2026 에 SSRI, CBT, TMS, psychedelic-assisted therapy 의 normalization target. ## 매 핵심 ### 매 circuit - **Amygdala**: 매 basolateral (BLA, threat learning) + central (CeA, autonomic output). - **vmPFC / dlPFC**: 매 top-down inhibition — 매 hyperactivity 와 anti-correlation. - **HPA axis**: 매 amygdala → CRH → cortisol — 매 chronic activation 의 maladaptive. ### 매 conditions - **Anxiety disorders**: GAD, social anxiety, panic. - **PTSD**: 매 trauma-associated cue 의 sensitization. - **MDD**: 매 sad-face bias. - **BPD**: 매 emotional reactivity. - **Autism**: 매 mixed — face-processing 의 atypical activation. ### 매 응용 1. Diagnostic biomarker (research stage). 2. Treatment response prediction (SSRI, exposure therapy). 3. Neurofeedback / TMS target localization. ## 💻 패턴 ### fMRI BOLD extraction ```python from nilearn import image, masking, datasets # Load Harvard-Oxford amygdala mask atlas = datasets.fetch_atlas_harvard_oxford('sub-maxprob-thr25-2mm') amyg_mask = image.math_img("img == 10", img=atlas.maps) # left amyg label # Extract task BOLD bold = image.load_img("sub-01_task-faces_bold.nii.gz") amyg_ts = masking.apply_mask(bold, amyg_mask).mean(axis=1) ``` ### Threat > neutral contrast ```python from nilearn.glm.first_level import FirstLevelModel events = pd.DataFrame({ "onset": [0, 20, 40, 60], "duration": [10]*4, "trial_type": ["threat", "neutral", "threat", "neutral"], }) flm = FirstLevelModel(t_r=2.0, hrf_model="spm") flm.fit(bold, events=events) contrast = flm.compute_contrast("threat - neutral", output_type="z_score") ``` ### Functional connectivity (amyg-vmPFC) ```python from nilearn.connectome import ConnectivityMeasure # Time series from amyg + vmPFC ROIs ts = np.column_stack([amyg_ts, vmpfc_ts]) conn = ConnectivityMeasure(kind="correlation") fc = conn.fit_transform([ts])[0] # 2x2 corr matrix amyg_vmpfc_fc = fc[0, 1] # negative in healthy, weaker in anxiety ``` ### HRV proxy (peripheral readout) ```python import neurokit2 as nk ecg = nk.ecg_clean(ecg_signal, sampling_rate=500) peaks = nk.ecg_peaks(ecg, sampling_rate=500)[0] hrv = nk.hrv_time(peaks, sampling_rate=500) # Low RMSSD ↔ high sympathetic ↔ amyg overdrive ``` ### Real-time fMRI neurofeedback target ```python def neurofeedback_signal(current_volume, amyg_mask, baseline_mean, baseline_std): activation = masking.apply_mask(current_volume, amyg_mask).mean() z = (activation - baseline_mean) / baseline_std # Display inverted bar — patient learns to downregulate return -z ``` ## 매 결정 기준 | 상황 | Intervention | |---|---| | Acute anxiety | Benzodiazepine (short-term), breathing | | Chronic anxiety | SSRI/SNRI + CBT | | PTSD | Trauma-focused CBT, EMDR, prazosin (nightmares) | | Treatment-resistant | TMS (dlPFC), ketamine, psilocybin trials | | Research / monitoring | fMRI + HRV biomarkers | **기본값**: 매 CBT + SSRI — 매 6-12 weeks 의 expected normalization. ## 🔗 Graph - Adjacent: [[Autism-Spectrum-Disorder]] ## 🤖 LLM 활용 **언제**: 매 patient psychoeducation, 매 literature summarization. **언제 X**: 매 diagnosis, 매 treatment prescription — 매 clinician 의 only. ## ❌ 안티패턴 - **Single-region focus**: 매 amygdala alone — 매 circuit (vmPFC, hippocampus) 의 consideration. - **State vs trait conflation**: 매 task-induced state ≠ stable trait. - **Reverse inference**: 매 amyg activation = "fear" — 매 many functions. - **fMRI as diagnostic**: 매 group-level 의 individual 의 X. ## 🧪 검증 / 중복 - Verified (Etkin & Wager 2007 meta-analysis, Shin & Liberzon 2010, Stein et al. 2007). - 신뢰도 A. ## 🕓 Changelog | 날짜 | 변경 | |---|---| | 2026-05-08 | Phase 1 | | 2026-05-10 | Manual cleanup — circuit + biomarker patterns |