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    • 2. 发明授权
    • Method and system for the computerized radiographic analysis of bone
    • 骨的计算机化影像学分析方法与系统
    • US06205348B1
    • 2001-03-20
    • US09298852
    • 1999-04-26
    • Maryellen L. GigerKunio Doi
    • Maryellen L. GigerKunio Doi
    • A61B505
    • G06T7/0012A61B6/4042A61B6/482A61B6/505A61B6/583G06T2207/10116G06T2207/30008G06T2207/30012
    • A computerized method and system for the radiographic analysis of bone structure and risk of future fracture with or without the measurement of bone mass. Techniques including texture analysis for use in quantitating the bone structure and risk of future fracture. The texture analysis of the bone structure incorporates directionality information, for example in terms of the angular dependence of the RMS variation and first moment of the power spectrum of a ROI in the bony region of interest. The system also includes using dual energy imaging in order to obtain measures of both bone mass and bone structure with one exam. Specific applications are given for the analysis of regions within the vertebral bodies on conventional spine radiographs. Techniques include novel features that characterize the power spectrum of the bone structure and allow extraction of directionality features with which to characterize the spatial distribution and thickness of the bone trabeculae. These features are then merged using artificial neural networks in order to yield a likelihood of risk of future fracture. In addition, a method and system is presented in which dual-energy imaging techniques are used to yield measures of both bone mass and bone structure with one low-dose radiographic examination; thus, making the system desirable for screening (for osteoporosis and risk of future fracture).
    • 一种计算机化方法和系统,用于骨骼结构的射线照相分析和未来骨折的风险,有或没有骨量的测量。 包括用于量化骨骼结构和未来骨折风险的纹理分析的技术。 骨结构的纹理分析包括方向性信息,例如在感兴趣的骨区域中的ROI的RMS变化和ROI的功率谱的第一时刻的角度依赖性方面。 该系统还包括使用双能量成像,以便通过一次检查获得骨量和骨骼结构的测量。 给出了常规脊柱X光照片对椎体内部区域进行分析的具体应用。 技术包括表征骨骼结构的功率谱的新特征,并且允许提取用于表征骨小梁的空间分布和厚度的方向性特征。 然后使用人工神经网络将这些特征合并,以产生未来骨折风险的可能性。 此外,提出了一种方法和系统,其中使用双能量成像技术通过一次低剂量射线照相检查来产生骨量和骨结构的测量; 因此,使得该系统对于筛选(对于骨质疏松症和未来骨折的风险)是理想的。
    • 4. 发明授权
    • Methods for improving the accuracy in differential diagnosis on
radiologic examinations
    • US6058322A
    • 2000-05-02
    • US900361
    • 1997-07-25
    • Robert M. NishikawaYulei JiangKazuto AshizawaKunio Doi
    • Robert M. NishikawaYulei JiangKazuto AshizawaKunio Doi
    • A61B6/00G06T1/00G06T7/00A61B5/05
    • G06T7/0012Y10S128/925
    • A computer-aided method for detecting, classifying, and displaying candidate abnormalities, such as microcalcifications and interstitial lung disease in digitized medical images, such as mammograms and chest radiographs, a computer programmed to implement the method, and a data structure for storing required parameters, wherein in the classifying method candidate abnormalities in a digitized medical image are located, regions are generated around one or more of the located candidate abnormalities, features are extracted from at least one of the located candidate abnormalities within the region and from the region itself, the extracted features are applied to a classification technique, such as an artificial neural network (ANN) to produce a classification result (i.e., probability of malignancy in the form of a number and a bar graph), and the classification result is displayed along with the digitized medical image annotated with the region and the candidate abnormalities within the region. In the detecting method candidate abnormalities in each of a plurality of digitized medical images are located, regions around one or more of the located candidate abnormalities in each of a plurality of digitized medical images are generated, the plurality of digitized medical images annotated with respective regions and candidate abnormalities within the regions are displayed, and a first indicator (e.g., blue arrow) is superimposed over candidate abnormalities comprising of clusters and a second indicator (e.g., red arrow) is superimposed over candidate abnormalities comprising of masses. In a user modification mode, during classification, a user modifies the located candidate abnormalities, the determined regions, and/or the extracted features, so as to modify the extracted features applied to the classification technique and the displayed results, and, during detection, a user modifies the located candidate abnormalities, the determined regions, and the extracted features, so as to modify the displayed results.
    • 5. 发明授权
    • Computer-aided method for automated image feature analysis and diagnosis
of digitized medical images
    • 计算机辅助方法用于数字化医学图像的自动图像特征分析和诊断
    • US6011862A
    • 2000-01-04
    • US098504
    • 1998-06-17
    • Kunio DoiXin-Wei XuShigehiko KatsuragawaJunji Morishita
    • Kunio DoiXin-Wei XuShigehiko KatsuragawaJunji Morishita
    • A61B6/00G06T1/00G06T7/00G06T7/60G06K9/62
    • G06T7/0012
    • A computerized method for the detection and characterization of disease in an image derived from a chest radiograph, wherein an image in the chest radiograph is processed to determine the ribcage boundary, including lung top edges, right and left ribcage edges, and right and left hemidiaphragm edges. Texture measures including RMS variations of pixel values within regions of interest are converted to relative exposures and corrected for system noise existing in the system used to produce the image. Texture and/or geometric pattern indices are produced. A histogram(s) of the produced index (indices) is produced and values of the histograms) are applied as inputs to a trained artificial neural network, which classifies the image as normal or abnormal. In one embodiment, obviously normal and obviously abnormal images are determined based on the ratio of abnormal regions of interest to the total number of regions of interest in a rule-based method, so that only difficult cases to diagnose are applied to the artificial neural network.
    • 一种用于检测和表征来自胸部X光照片的图像中的疾病的计算机化方法,其中处理胸部X光片中的图像以确定胸腔边界,包括肺顶缘,右和左胸廓边缘,以及右侧和左侧膈肌 边缘。 包括感兴趣区域内的像素值的RMS变化的纹理度量被转换为相对曝光并且对用于产生图像的系统中存在的系统噪声进行校正。 产生纹理和/或几何图案索引。 生成的索引(索引)的直方图(直方图的值)被应用为训练的人造神经网络的输入,其将图像分类为正常或异常。 在一个实施例中,基于基于规则的方法,基于感兴趣的异常区域与感兴趣区域总数的比率来确定明显的正常和明显异常的图像,使得仅将困难的诊断情况应用于人造神经网络 。
    • 9. 发明授权
    • Method and system for determination of instantaneous and average blood
flow rates from digital angiograms
    • 用于确定数字血管造影图中瞬时和平均血流速率的方法和系统
    • US5150292A
    • 1992-09-22
    • US428059
    • 1989-10-27
    • Kenneth R. HoffmannKunio Doi
    • Kenneth R. HoffmannKunio Doi
    • A61B5/026A61B6/00G06F19/00G06T7/00G06T7/20
    • A61B6/481A61B6/504A61B6/507G06T7/0016G06T7/20G06T2207/30101
    • A method and system for quantitation of blood flow rates by using digital subtraction angiographic (DSA) images, wherein the spatial shift of the distribution of contrast material injected into an opacified vessel in the acquired angiographic images is analyzed as a bolus of the contrast material proceeds through the vessel. In order to determine the distance that the bolus travels between image acquisitions, there is obtained from the DSA images the distribution of vessel contrast along the length of the vessel, called and "distance-density" curve. The distance that the contrast material travels during the time between two images acquisitions is determined by means of cross correlation of the two respective distance-density curves. The flow rate between the image acquisitions is calculated by multiplying this distance by the frame rate and the vessel cross-sectional area which is estimated from the vessel size assuming a circular cross section. Thus, for high frame-rate acquistions, instantaneous blood flow rates can be determined. The method and system are particularly useful for measurement of pulsatile blood flow rates.
    • 一种通过使用数字减影血管造影(DSA)图像来定量血流速度的方法和系统,其中分析所获取的血管造影图像中注入到不透明容器中的造影剂的分布的空间位移,作为造影材料进行的推注 通过船只。 为了确定推注在图像采集之间的距离,从DSA图像获得沿容器长度的血管对比度的分布,称为“距离密度”曲线。 通过两个相应的距离密度曲线的互相关来确定对比材料在两次图像采集期间的行进距离。 通过将该距离乘以帧速率和从容器尺寸估计的容器横截面面积来计算图像采集之间的流量,其假设为圆形横截面。 因此,对于高帧速率采集,可以确定瞬时血流速率。 该方法和系统对于测量脉动血流速度特别有用。
    • 10. 发明授权
    • Method and system for localization of inter-rib spaces and automated
lung texture analysis in digital chest radiographs
    • 数字胸片X线片间肋间距定位及自动肺结构分析方法与系统
    • US4851984A
    • 1989-07-25
    • US81143
    • 1987-08-03
    • Kunio DoiShigehiko Katsuragawa
    • Kunio DoiShigehiko Katsuragawa
    • A61B6/00A61B5/08G06F19/00G06T1/00G06T5/00G06T7/00G06T7/40
    • A61B5/08A61B6/5258G06T7/0012G06T7/0081A61B5/7257G06T2207/20144G06T2207/30061Y10S378/901
    • A method and system for automated analysis of digital radiographic images in which regions-of-interest (ROI's) are first determined, and subsequently analyzed for abnormalities. To locate the ROI's, the outer ribcage and midline boundary locations of the chest image are determined from the digital image data. Vertical profiles are then selected and background trend is then removed from each vertical profile. A shift-variant sinusoidal function is fitted to each vertical profile and ROI's are selected based on the fitted functions. The non-uniform background trend is removed from the original image data of each selected ROI to obtain corrected data. The power spectrum of the lung texture is obtained from the 2D Fourier transform of the corrected data and is filtered by the human visual response. Finally, the root-mean-square (rms) variation, R, and the first moment of the power spectrum, M, are determined as quantitative texture measures for the magnitude and coarseness (or fineness), respectively, of the lung texture.
    • 一种用于自动分析数字放射照相图像的方法和系统,其中首先确定感兴趣区域(ROI),并随后分析异常。 为了定位ROI,从数字图像数据确定胸部图像的外部胸腔和中线边界位置。 然后选择垂直剖面,然后从每个垂直剖面中去除背景趋势。 根据拟合的功能,选择每个垂直剖面的偏移正弦函数,并选择ROI。 从每个所选ROI的原始图像数据中去除不均匀的背景趋势,以获得校正数据。 肺结构的功率谱由校正数据的二维傅里叶变换获得,并通过人类视觉反应过滤。 最后,均方根(rms)变化R和功率谱的第一时刻M分别被确定为肺结构的大小和粗糙度(或细度)的定量纹理测量。