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姓名 蔡欣芮(Hsin-Jui Tsai)  查詢紙本館藏   畢業系所 機械工程學系
論文名稱 以兩張二維X光影像重建三維心血管模型的研究
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摘要(中) 冠狀動脈血管攝影術是一種為了輔助心導管手術,以
X光拍攝心血管的一種成像技
術,手術 過程中醫生會拍攝大量 X光片,通常兩張正交 (AP、 LA方向 )的二維影像,透
過兩張影像的位置關係以及經驗判斷,來確定 導管在每個時候的位置是否正確,有時為
了得到能清楚顯示血管結構的影像,必須要多次拍攝得到適當的影像。
為了能提供醫師更直觀的
血管流向 資訊,並減少 X光的拍攝,在本研究中希望能建
立一套以 兩張二 維 X光 影像重建三維心臟血管模型的演算法,包含影像的前處理、取得
兩張影像的對 應 點的方法 最後計 算出三維空間座標。影像前處理的部分,目的是為了將
血管影像從背景中分割出來,其中包含去除雜訊、 不均勻光線校正 與 影像強化 對影像
中血管區域細線化找出血管中心線, 再使用 中心線 分岔點 與 基於 對極幾何 的方法 找出對
應點, 最後計 算出三維模型在空間中的位 置。 重建出的三維模型可提供心血管每個分支
的走向與長度,協助醫師 了解 導管 需 前進的方向和距離 ,降低原本手術過程中須不斷拍
攝 X光影像確認導管位置的需求 。
在驗證重建方法實驗中,使用
2D C-arm拍攝自製的心血管假體,獲得兩張 X光影
像進行重建,並 以 手持驗證工具驗證重建出的空間位置的正確性,重建位置誤差約為
1.84mm,標準差 0.74mm。
摘要(英) Coronary angiography is an imaging technique that uses X-rays to photograph the cardiovascular system to assist in cardiac catheterization. During the operation, the doctor will take a large number of X-ray images, which are usually in two directions ( AP/LA direction). Through the positional relationship of the two images and empirical judgments, it is determined whether the catheter position is correct at each time. Sometimes in order to obtain an image that clearly shows the structure of the blood vessel, it is necessary to take multiple shots to obtain an appropriate image.
To provide physicians with more intuitive blood vessel flow information and reduce X-ray shooting, in this study, we hope to establish an algorithm for reconstructing a three-dimensional heart vessel model from two two-dimensional X-ray images. The algorithm includes the pre-processing of the image, the method to obtain the corresponding points of the two images, and finally calculate the three-dimensional space coordinates. The purpose of the image pre-processing part is to segment the blood vessel image from the background, including noise removal, uneven light calibration, and enhancement filtering; Finding the centerlines of the vessel by image skeleton then can help to find the bifurcation points of the centerlines. Then calculate the corresponding point based on the epipolar geometry and finally measure the position of the three-dimensional model in space. In the experiment of verifying the reconstruction method, 2D C-arm was used to shoot the self-made cardiovascular prosthesis, two X-ray images were obtained for reconstruction, and the verification tool was held to verify the correctness of the reconstructed spatial position. The reconstruction position error is about 1.84mm, and the standard deviation is 0.74mm.
關鍵字(中) ★ 冠狀動脈血管造影
★ 血管分割
★ 三維重建
關鍵字(英) ★ Coronary Angiography
★ Vessel Segmentation
★ 3D Reconstruction
論文目次 摘要 i
Abstract ii
目錄 iii
圖目錄 iv
表目錄 vi
第一章 緒論 1
1-1 研究動機 1
1-2 文獻回顧 2
1-3 研究內容簡介 5
第二章 研究方法 6
2-1 三維模型的重建方法 6
2-1-1 獲得影像與影像分割 7
2-1-2 三維重建方法 9
2-1-3 基於對極幾何計算空間位置 19
2-2 血管分割的方法 22
第三章 實驗結果與討論 29
3-1 自定義模型重建 29
3-2 十字金屬板重建 31
3-3 血管假體重建 35
第四章 結論與未來展望 43
參考文獻 44
附錄一 47
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指導教授 曾清秀(Ching-Shiow Tseng) 審核日期 2021-7-26
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