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Ultrasound Multi-needle Detection Using Deep Attention U-Net with TV Regularizations

机译:超声波多针检测使用深入关注U-Net,具有电视规范化

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A deep-learning model based on the U-Net architecture was developed to segment multiple needles in the 3D transrectal ultrasound (TRUS) images. Attention gates were adopted in our model to improve the prediction on the small needle points. Furthermore, the spatial continuity of needles was encoded into our model with total variation (TV) regularization. The combined network was trained on 3D TRUS patches with the deep supervision strategy, where the binary needle annotation images from simulation CTs were provided as ground truth. The trained network was then used to localize and segment the HDR needles for a new patient TRUS images during high-dose-rate (HDR) prostate brachytherapy. The needle shaft and tip errors against CT-based ground truth were used to evaluate other methods and other methods as comparison. Our method detected 96% needles of 339 needles from 23 HDR prostate brachytherapy patients with 0.29±0.24 mm at shaft error and 0.442±0.831 mm at tip error. For shaft localization, our method resulted in 96% localizations with less than 0.8 mm error (needle diameter is 1.67 mm), while for tip localization, our method resulted in 75% needles with 0 mm error and 21% needles with 2 mm error (TRUS image slice thickness is 2 mm). No significant difference was observed (p = 0.83) on tip localization between our results with the ground truth. Compared with U-Net and deep supervised attention U-Net, the proposed method delivers a significant improvement on both shaft error and tip error. Besides, to our best knowledge, this is the first attempt on multi-needle localization in the prostate brachytherapy. The 3D rendering of the needles could help clinicians to evaluate the needle placements. It paves the way for the development of real-time radiation plan dose assessment tools that can further elevate the quality and outcome of prostate HDR brachytherapy.
机译:基于U-Net架构的深度学习模型被开发成在3D语句超声(TRUS)图像中段分段多个针。我们的模型采用了注意盖茨,以改善小针点上的预测。此外,通过总变化(TV)正则化进行针对针的空间连续性。组合网络在3D TRUS贴片上培训,具有深度监督策略,其中来自模拟CTS的二进制针注释图像被提供为基础事实。然后,培训的网络用于在高剂量率(HDR)前列腺近距离放射治疗期间为新患者TRUS图像定位和分割HDR针。针对基于CT的地面真理的针轴和尖端误差用于评估其他方法和其他方法作为比较。我们的方法检测到339%针的339%针,在轴误差下0.29±0.24 mm的23个HDR前列腺近距离放射治疗患者,尖端误差0.442±0.831 mm。对于轴定位,我们的方法导致96%的本地化,误差小于0.8毫米(针直径为1.67 mm),而对于尖端定位,我们的方法导致75%的针头有0 mm误差和2 mm错误的21%针头( TRUS图像切片厚度为2 mm)。在我们的结果与地面真理之间观察到尖端定位没有显着差异(p = 0.83)。与U-Net和深度监督U-Net相比,所提出的方法对两个轴误差和尖端误差提供了显着的改进。此外,为了我们的最佳知识,这是第一次尝试前列腺近距离放射治疗中的多针定位。针的3D渲染可以帮助临床医生评估针头展示。它为实时辐射计划的发展铺平了途径,可以进一步提高前列腺HDR近距离放射治疗的质量和结果。

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