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首页> 外文期刊>Radiation oncology >Radiomics based targeted radiotherapy planning (Rad-TRaP): a computational framework for prostate cancer treatment planning with MRI
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Radiomics based targeted radiotherapy planning (Rad-TRaP): a computational framework for prostate cancer treatment planning with MRI

机译:基于Radiomics的靶向放射治疗计划(Rad-TRaP):MRI前列腺癌治疗计划的计算框架

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Background Radiomics or computer – extracted texture features have been shown to achieve superior performance than multiparametric MRI (mpMRI) signal intensities alone in targeting prostate cancer (PCa) lesions. Radiomics along with deformable co-registration tools can be used to develop a framework to generate targeted focal radiotherapy treatment plans. Methods The Rad-TRaP framework comprises three distinct modules. Firstly, a module for radiomics based detection of PCa lesions on mpMRI via a feature enabled machine learning classifier. The second module comprises a multi-modal deformable co-registration scheme to map tissue, organ, and delineated target volumes from MRI onto CT. Finally, the third module involves generation of a radiomics based dose plan on MRI for brachytherapy and on CT for EBRT using the target delineations transferred from the MRI to the CT. Results Rad-TRaP framework was evaluated using a retrospective cohort of 23 patient studies from two different institutions. 11 patients from the first institution were used to train a radiomics classifier, which was used to detect tumor regions in 12 patients from the second institution. The ground truth cancer delineations for training the machine learning classifier were made by an experienced radiation oncologist using mpMRI, knowledge of biopsy location and radiology reports. The detected tumor regions were used to generate treatment plans for brachytherapy using mpMRI, and tumor regions mapped from MRI to CT to generate corresponding treatment plans for EBRT. For each of EBRT and brachytherapy, 3 dose plans were generated - whole gland homogeneous ( (mathbb {P}^{ext {WH}}) ) which is the current clinical standard, radiomics based focal ( (mathbb {P}^{ext {RF}}) ), and whole gland with a radiomics based focal boost ( (mathbb {P}^{ext {WF}}) ). Comparison of (mathbb {P}^{ext {RF}}) against conventional (mathbb {P}^{ext {WH}}) revealed that targeted focal brachytherapy would result in a marked reduction in dosage to the OARs while ensuring that the prescribed dose is delivered to the lesions. (mathbb {P}^{ext {WF}}) resulted in only a marginal increase in dosage to the OARs compared to (mathbb {P}^{ext {WH}}) . A similar trend was observed in case of EBRT with (mathbb {P}^{ext {RF}}) and (mathbb {P}^{ext {WF}}) compared to (mathbb {P}^{ext {WH}}) . Conclusions A radiotherapy planning framework to generate targeted focal treatment plans has been presented. The focal treatment plans generated using the framework showed reduction in dosage to the organs at risk and a boosted dose delivered to the cancerous lesions.
机译:背景技术在针对前列腺癌(PCa)病变的研究中,已经证明,放射线学或计算机提取的纹理特征比单独的多参数MRI(mpMRI)信号强度具有更好的性能。放射线学和可变形的共配准工具可用于开发框架,以生成针对性的聚焦放疗治疗计划。方法Rad-TRaP框架包括三个不同的模块。首先,一个模块通过功能启用的机器学习分类器在mpMRI上基于放射学检测PCa病变。第二模块包括多模式可变形共配准方案,以将组织,器官和所描绘的目标体积从MRI映射到CT。最后,第三个模块包括使用从MRI传输到CT的目标轮廓,在MRI上进行近距离放射治疗时基于放射学的剂量计划,在EBRT上进行基于CT的剂量计划。结果使用来自两个不同机构的23例患者研究的回顾性队列评估了Rad-TRaP框架。来自第一家机构的11名患者被用来训练放射性组分类器,该分类器用于检测来自第二家机构的12名患者的肿瘤区域。训练机器学习分类器的地面真相癌症描述是由经验丰富的放射肿瘤学家使用mpMRI,活检位置知识和放射学报告得出的。检测到的肿瘤区域用于使用mpMRI生成近距离治疗的治疗计划,肿瘤区域从MRI映射到CT以生成相应的EBRT治疗计划。对于每个EBRT和近距离放射疗法,均生成了3个剂量计划-整个腺体均一(( mathbb {P} ^ { text {WH}} )),这是当前的临床标准,基于放射学的局灶性(( mathbb {P} ^ { text {RF}} )),以及整个基于放射线的聚焦增强腺体(( mathbb {P} ^ { text {WF}} ))。 ( mathbb {P} ^ { text {RF}} )与常规( mathbb {P} ^ { text {WH}} )的比较显示,针对性局灶性近距离放射治疗可显着降低剂量的OARs,同时确保将规定的剂量传递到病变。与( mathbb {P} ^ { text {WH}} 相比,( mathbb {P} ^ { text {WF}} )导致OAR的剂量仅略有增加。与(()相比,在EBRT中使用( mathbb {P} ^ { text {RF}} )和( mathbb {P} ^ { text {WF}} )的情况下,观察到类似的趋势mathbb {P} ^ { text {WH}} )。结论已经提出了放射治疗计划框架,以产生针对性的局部治疗计划。使用该框架生成的重点治疗计划显示降低了对处于危险中的器官的剂量,并增加了向癌性病变的剂量。

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