1 / 23

Precise Segmentation of 3-D Magnetic Resonance Angiography

Precise Segmentation of 3-D Magnetic Resonance Angiography. 出處 :IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, VOL. 59, NO. 7, JULY 2012 作者 : Ayman El- Baz 日期 :12/24/2013 Speaker: 曾天佑. Outline. I. INTRODUCTION II. SLICE-WISE SEGMENTATION WITH THE LCDG MODELS III. SEGMENTATION ACCURACY

forest
Download Presentation

Precise Segmentation of 3-D Magnetic Resonance Angiography

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Precise Segmentation of 3-D MagneticResonanceAngiography 出處:IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, VOL. 59, NO. 7, JULY 2012 作者:AymanEl-Baz 日期:12/24/2013 Speaker:曾天佑

  2. Outline • I. INTRODUCTION • II. SLICE-WISE SEGMENTATION WITH THE LCDG MODELS • III. SEGMENTATION ACCURACY • IV. EXPERIMENTAL RESULTS

  3. I. INTRODUCTION • 傳統的3-D血管造影技術(MRA)使用time-of-flight (TOF)和phase contrast(PC) ,但會因脂肪、骨骼等物質導致誤判。 • 本文發現MRA有multimodal性質,使血管可以準確地從背景中,使用體素強度精確識別的機率模型切割出每張影像的血管部分。

  4. II. SLICE-WISE SEGMENTATION WITH THE LCDG MODELS

  5. TN=TrueNegative(該被找到,沒找到)錯誤 • TP=TruePositive(該被找到,有找到)正確 • FN=FalseNegative (不該被找到,沒找到)正確 • FP=FalsePositive(不該被找到,找到了)錯誤

  6. Linear Combination of Discrete Gaussians(LCDG) • 高斯分佈的離散線性組合 • X=每張3D磁共振層影像切片 • X = (Xs : s = 1, . . . , S) • Xs = (Xs (i, j):(i, j) ∈ R;Xs (i, j) ∈ Q) • R=每張影像中的像素座標 • Q=每個像素座標的灰階值 • Fs = (fs (q): q ∈ Q;q∈Qfs (q) = 1) • fs聯合密度函式

  7. 每張slice都是模型K部分的影像 • 本論文實驗使用K=3的影像 • 估計每個K-model中Fs 訊號的機率分布關聯性來組合整體模型 • 離散高斯分布 Discrete Gaussian (DG) • 代表每個Gray level的機率函式 • 代表累積機率函式 • 是速記符號,, 平均值, 方差

  8. Gray level機率函式 • 和 都是LCDG 元素,其中

  9. 其中 ,W代表權重,且所有權重都非負值,所以 0 • 的Bayesian(貝葉斯)機率為 F • 以每個K為樣本個別計算參數出W

  10. 本文對真實機率不限制識別過程,只檢查限制的有效性本文對真實機率不限制識別過程,只檢查限制的有效性 • 方程式(3)和貝葉斯 F 都是檢查有效性 • 為了精確分辨LCDG分類數目的精準度,使用EM-based 的技術,以分辨連續高斯線性組合的機率密度

  11. 切割步驟 • 1)針對每張Slice做5個步驟 • A)取得邊緣機率分佈的灰階值( ) • B)找出LCDG參數的初始值 • C)使用改良後的EMalgo.固定 和 • D)找出LCDG中K個模組且通過最小預期錯誤的誤判和選擇LCDG子模型中最大的平均值 • E)給一個t閥值分離背景和血管

  12. 2)使用[33]的3-D體積生長算法,找出最大連通部分2)使用[33]的3-D體積生長算法,找出最大連通部分 • 切割過程主要目的是找出一個較佳的閥值分離背景和血管

  13. III. SEGMENTATION ACCURACY • 整體錯誤率:

  14. IV. EXPERIMENTAL RESULTS • A. Segmentation of Natural TOF- and PC-MRA Images • time-of-flight(TOF); phase contrast(PC)

  15. B. Validating the Segmentation Accuracy With Phantoms

  16. Receiver OperatingCharacteristic(ROC)

  17. End

More Related