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npx versuz@latest install hiyenwong-ai-collection-collection-skills-bridge-neurodivergence-detectiongit clone https://github.com/hiyenwong/ai_collection.gitcp ai_collection/SKILL.MD ~/.claude/skills/hiyenwong-ai-collection-collection-skills-bridge-neurodivergence-detection/SKILL.md---
name: bridge-neurodivergence-detection
description: BRIDGE神经多样性检测方法论。整合图规范建模和深度生成网络,创建神经典型发育轨迹参考,评估个体神经偏离程度。适用于神经发育障碍诊断、脑龄预测、连接组分析。触发词:神经多样性、神经发育障碍、脑龄、规范建模、neurodivergence、brain age。
user-invocable: true
---
# BRIDGE Neurodivergence Detection - 神经多样性检测
## 核心思想
整合图规范建模和深度生成网络,创建神经典型发育轨迹参考,量化神经偏离。
**来源:** arXiv:2410.11064
**效用:** 0.93
---
## 方法论
### 框架组件
- 规范建模:建立神经典型发育轨迹
- 深度生成模型:学习连接组变化
- 偏离评估:计算神经多样性分数
---
## 实现
```python
import torch.nn as nn
class BRIDGEModel(nn.Module):
def __init__(self, n_regions=200, latent_dim=64):
super().__init__()
self.encoder = nn.Sequential(
nn.Linear(n_regions * n_regions, 256),
nn.ReLU(),
nn.Linear(256, latent_dim)
)
self.age_predictor = nn.Linear(latent_dim, 1)
def predict_brain_age(self, connectivity):
x = connectivity.flatten()
h = self.encoder(x)
return self.age_predictor(h)
def compute_neurodivergence(self, conn, age):
brain_age = self.predict_brain_age(conn)
return abs(brain_age - age)
```
---
## Activation Keywords
- 神经多样性
- 神经发育障碍
- 脑龄
- 规范建模
## Tools Used
- torch
- numpy
## Instructions for Agents
1. 建立神经典型参考轨迹
2. 预测个体脑龄
3. 计算偏离分数
## Examples
评估自闭症儿童的脑连接偏离程度。
## 参考文献
- arXiv:2410.11064