博碩士論文 101331010 詳細資訊




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姓名 葉旭文(Shiu-wen Yeh)  查詢紙本館藏   畢業系所 生物醫學工程研究所
論文名稱 運用時頻轉換分析方法研究 工作記憶訓練之人類大腦可塑性
(Using time-frequency transform to analyze human brain plasticity of working memory training)
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摘要(中) 過去人們曾經認為隨著年齡變化工作記憶(Working memory)的容量仍然是恆定的,但是越來越多的心理生理研究顯示,工作記憶的容量是可以經由適當且長期的訓練造成改變,例如工作記憶的容量提升會反映在任務表現與智力測驗的增加上。但仍有部分的學者提出相反的意見,認為工作記憶的容量提升並沒有反映在智力測驗分數的增減上,其中的原因可能是,認知訓練的成效造成神經生理結構上的改變,但最主要的效果並不是反映在智力測驗上。因此本研究希望由事件相關同步化/非同步化(ERS/ERD)方法,從神經生理的電訊號改變中,找到一個客觀量化的指標,以用來評估工作記憶訓練的成效。
本研究招募17位中央大學的學生並隨機分組,其中控制組8人,實驗組9人。控制組要求進行與記憶無關的動作控制遊戲,實驗組則進行一個與spatial span相似的益智遊戲,兩組的訓練時間為三週,每週五次,每次三十分鐘。在訓練前後受試者會進行四種難度的空間n-back作業,並同時記錄腦電圖。
腦電圖資料使用莫萊小波轉換做後處理,分析頻帶為Low theta 4-6Hz、High theta 6-8Hz、Low alpha 8-10Hz、High alpha 10-12Hz,接著使用事件相關同步化/非同步化技術,找出兩組表現相異之處。除此之外,反應時間與回答正確率也在實驗結束後做蒐集,加入統計分析中。
對於行為數據的統計結果顯示,反應時間與回答正確率中,兩組並不存在組間差異,這結果與先前的文獻一致,行為數據的變化未必能反映出工作記憶的成效。經由迴歸分析,我們發現記憶負荷與行為數據存在這非線性的相關,但這結果與訓練無關。腦電圖的結果顯示了工作記憶訓練的成效(組間差異)主要表現在後側腦區的ERD/ERS (Low theta, 0~500 ms)。另外,考慮到不對稱的因素,我們發現訓練後在中央腦區(Low theta, 500~1500ms)和後側腦區 (Low theta 、Low alpha , 250~1000ms)單邊優勢有顯著的組間差異。
綜合以上結果,我們的研究表明記憶訓練會造成神經生理的改變,但是不一定表現在行為數據上。未來的工作中,我們會繼續找出此訓練成效之下的神經機制。
摘要(英) It was once believed that working memory (WM) capacity is constant through life span. Recently, psycho-physiologic evidence has emergence that, working memory capacity is adaptive after adequate training as reflected in better task performance or greater standardized intelligence scores (IQ scores). However, unified conclusions has not yet reached because experimental results from behavioral studies were inconsistent: the IQ scores didn′t increase after training in some studies while some did. The reason may rest upon the fact that, the neurophysiologic plasticity after training is not necessarily related to the IQ scores. In this study, we aimed to find a estimate of working memory training effect by electroencephalography (EEG) and the event-related synchronization/ desynchronization (ERS/ERD) method.
Seventeen healthy university students were recruited and randomly divided into two groups (Control:8 and Experimental:9). The experimental group was required to play a spatial span task-liked puzzle game to train the WM system while the control group played only a movement-related game. The training intensity was 30 minutes a day, 5 days a week for 3 weeks for both groups. EEG data (Sampling rate = 2000 Hz, down sampling to 200Hz) from all subjects were recorded during spatial n-back tasks(n=0,1,2,3) at different training phases (pre- and post-training). EEG data were transformed into time-frequency signal by Morlet wavelet transform and divided into four frequency bands (Low theta 4-6Hz、High theta 6-8Hz、Low alpha 8-10Hz、High alpha 10-12Hz) for further analysis. The ERD/ERS of these four frequency bands were computed for each subject and ANOVA test were performed to find the difference between groups. In addition, the behavior data of reaction time (RT) and response correct rate also entered the statistical test.
The statistical test on behavioral data shows that there is no significant difference between two groups. This result is in line with some previous studies that the behavioral result may not be able to reflect the WM training effect. By using the regression analysis, we found that there exists a nonlinear relation between memory load and the behavioral data, irrespective to training.
The EEG results show that the WM training effect (i.e. the difference between two groups) was most manifest in posterior ERD/ERS (low theta, 0~500 ms). Furthermore, when taking into account the lateralization factor, we found a significant between-group difference of unilateral dominance over central (low theta, 500~1500ms) and posterior regions (low theta、low alpha 250~1000ms) after training. Collectively, our findings suggest that working memory training would induce the neurophysiological changes, though it is not necessarily reflected in the behavior data. In the future work, we will be looking for the mechanisms underlying these training changes.
關鍵字(中) ★ 工作記憶訓練
★ 事件相關同步化
★ 事件相關非同步化
★ 空間 n-back作業
關鍵字(英) ★ Working memory training
★ Event-related synchronization
★ Event-related desynchronization
★ Spatial n-back task
論文目次 Abstract IV
目錄 VI
圖目錄 IX
表目錄 X
第一章 緒論 1
1-1 研究動機與背景 1
1-2 研究目的 2
1-3 論文架構 2
第二章 背景知識與文獻回顧 4
2-1 腦電波圖 4
2-1-1 腦波的起源 4
2-1-2 腦波的分類 4
2-1-3 腦波的量測 5
2-2 工作記憶 7
2-2-1 記憶的階段 7
2-2-2 記憶的分類 7
2-2-3 工作記憶模型 8
2-2-4工作記憶與流體智力 10
2-3 工作記憶與時頻分析 12
2-3-1 事件相關電位 12
2-3-2 事件相關同步化/非同步化 13
2-3-3 N-back實驗在Theta頻帶的表現 15
2-3-4 N-back實驗在Alpha頻帶的表現 17
第三章 儀器設備與研究方法 19
3-1 儀器設備 19
3-2 研究方法 20
3-2-1 受試者 20
3-2-2 腦電波實驗 21
3-2-3 工作記憶訓練 23
3-2-4 數據分析 26
3-2-5 小波轉換 27
第四章 實驗結果 30
4-1 行為數據 30
4-1-1 反應時間 30
4-1-2 回答正確率 36
4-2 記憶訓練對於大腦活化區域的改變 42
4-2-1 N-back任務對於前中後腦區的活化改變 42
4-2-2 N-back任務的單邊優勢 49
第五章 討論與結論 57
5-1 行為數據 57
5-2 前中後腦區的活化改變 60
5-2-1 前側腦區(F3,Fz,F4) 60
5-2-2 中央腦區(T7,C3,Cz,C4,T8) 61
5-2-3 後側腦區(P7,P3,Pz,P4,P8,Oz) 62
5-3 單邊優勢的改變 63
5-3-1 前側腦區(F3-F4) 63
5-3-2 中央腦區(C3-C4) 63
5-3-3 後側腦區(P3-P4) 64
5-3-4 結論 66
第六章 未來展望 68
第七章 附錄 70
第八章 參考文獻 82
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指導教授 陳純娟(Chun-Chuan Chen) 審核日期 2014-11-7
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