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A Software Tool to Automatically Evaluate and Quantify Diffusion Weighted Images

机译:自动评估和量化扩散加权图像的软件工具

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Diffusion weighted imaging (DWI) derived apparent diffusion coefficient (ADC) is currently used in identifying and post-therapy followup of several types of tumours. In brain tumours in particular ADC values are known to correlate inversely to tumour cellularity and high and low malignant areas can be distinguished based on ADC values.The average ADC value increases after successful chemotherapy, radiotherapy or a combination of both and is used as a surrogate marker for treatment response.More recently DWI derived ADC has been used to differentiate pancreatic cancer from healthy pancreatic tissue although with some limitations. A second DWI derived parameter, the perfusion fraction / has also shown promise in classifying pancreatic lesions. This parameter is estimated using special multiple b-value prototypes and the IVIM model.The main purpose of our project was to develop a software platform to assist radiologists in studying cancerous lesions by quantifying and mapping these two DWI derived parameters: ADC and perfusion fraction f. The platform we developed automatically calculates and maps the ADC and IVIM-model perfusion fraction/values from raw diffusion data.Furthermore, the software enables the automated delineation and ADC quantification of tissue sections in a fast, objective, user independent manner and has so far been applied to successfully delineating brain tumours. The perfusion fraction /mapping capabilities have so far been successfully applied to delineate pancreatic cancer lesions from healthy tissue. Further studies are in preparation to apply this software tool to study both ADC and perfusion fraction / in other types of cancerous lesions.
机译:目前,扩散加权成像(DWI)派生的表观扩散系数(ADC)用于确定几种类型的肿瘤并进行治疗后的随访。特别是在脑肿瘤中,已知ADC值与肿瘤细胞流动性成反比,并且可以基于ADC值来区分高恶性区域和低恶性区域。 成功进行化学疗法,放疗或两者结合后,ADC的平均值会增加,并用作治疗反应的替代指标。 最近,尽管有一定的局限性,DWI衍生的ADC已被用于区分胰腺癌和健康的胰腺组织。 DWI得出的第二个参数,灌注分数/也显示了对胰腺病变进行分类的希望。该参数是使用特殊的多个b值原型和IVIM模型估算的。 我们项目的主要目的是开发一个软件平台,以通过量化和映射这两个DWI导出的参数(ADC和灌注分数f)来协助放射科医生研究癌性病变。我们开发的平台可以根据原始扩散数据自动计算并映射ADC和IVIM模型的灌注分数/值。 此外,该软件能够以快速,客观,用户独立的方式实现组织切片的自动描绘和ADC定量,并且迄今为止已被成功用于描绘脑肿瘤。迄今为止,灌注分数/映射功能已成功应用于从健康组织中描绘胰腺癌病变。正在准备进行进一步的研究,以应用此软件工具来研究ADC和灌注分数/其他类型的癌性病变。

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