National Center for Image Guided Therapy, Department of Radiology, Brigham and Women's Hospital and Harvard Medical School, 75 Francis Street, Boston, MA, 02115, USA.
Urology, Kyushu University, 3-1-1 Maidashi, Higashi-ku, Fukuoka, 8128582, Japan.
Int J Comput Assist Radiol Surg. 2023 Mar;18(3):449-460. doi: 10.1007/s11548-022-02757-2. Epub 2022 Sep 24.
Understanding the three-dimensional anatomy of percutaneous intervention in prostate cancer is essential to avoid complications. Recently, attempts have been made to use machine learning to automate the segmentation of functional structures such as the prostate gland, rectum, and bladder. However, a paucity of material is available to segment extracapsular structures that are known to cause needle deflection during percutaneous interventions. This research aims to explore the feasibility of the automatic segmentation of prostate and extracapsular structures to predict needle deflection.
Using pelvic magnetic resonance imagings (MRIs), 3D U-Net was trained and optimized for the prostate and extracapsular structures (bladder, rectum, pubic bone, pelvic diaphragm muscle, bulbospongiosus muscle, bull of the penis, ischiocavernosus muscle, crus of the penis, transverse perineal muscle, obturator internus muscle, and seminal vesicle). The segmentation accuracy was validated by putting intra-procedural MRIs into the 3D U-Net to segment the prostate and extracapsular structures in the image. Then, the segmented structures were used to predict deflected needle path in in-bore MRI-guided biopsy using a model-based approach.
The 3D U-Net yielded Dice scores to parenchymal organs (0.61-0.83), such as prostate, bladder, rectum, bulb of the penis, crus of the penis, but lower in muscle structures (0.03-0.31), except and obturator internus muscle (0.71). The 3D U-Net showed higher Dice scores for functional structures ([Formula: see text]0.001) and complication-related structures ([Formula: see text]0.001). The segmentation of extracapsular anatomies helped to predict the deflected needle path in MRI-guided prostate interventions of the prostate with the accuracy of 0.9 to 4.9 mm.
Our segmentation method using 3D U-Net provided an accurate anatomical understanding of the prostate and extracapsular structures. In addition, our method was suitable for segmenting functional and complication-related structures. Finally, 3D images of the prostate and extracapsular structures could simulate the needle pathway to predict needle deflections.
了解前列腺癌经皮介入的三维解剖结构对于避免并发症至关重要。最近,人们尝试使用机器学习来自动分割前列腺、直肠和膀胱等功能结构。然而,用于分割已知在经皮介入过程中导致针偏转的包膜外结构的材料却很少。本研究旨在探索自动分割前列腺和包膜外结构以预测针偏转的可行性。
使用骨盆磁共振成像(MRI),对前列腺和包膜外结构(膀胱、直肠、耻骨、骨盆膈肌、球海绵体肌、阴茎球、坐骨海绵体肌、阴茎脚、会阴浅横肌、闭孔内肌和精囊)进行了 3D U-Net 训练和优化。通过将术中 MRI 放入 3D U-Net 中,对前列腺和包膜外结构进行分割,验证了分割的准确性。然后,使用基于模型的方法,使用分割后的结构来预测在腔内 MRI 引导活检中偏转的针路径。
3D U-Net 对实质器官(前列腺、膀胱、直肠、阴茎球、阴茎脚)的 Dice 评分在 0.61-0.83 之间,但肌肉结构(除外闭孔内肌)的评分较低(0.03-0.31)。3D U-Net 对功能结构([Formula: see text]0.001)和与并发症相关的结构([Formula: see text]0.001)的 Dice 评分更高。包膜外解剖结构的分割有助于预测前列腺 MRI 引导介入前列腺的偏转针路径,准确率为 0.9 至 4.9 毫米。
我们使用 3D U-Net 的分割方法提供了对前列腺和包膜外结构的准确解剖学理解。此外,我们的方法适用于分割功能和与并发症相关的结构。最后,前列腺和包膜外结构的 3D 图像可以模拟针路径,以预测针的偏转。