Teja Pathour, Ling Ma, Douglas W Strand, Jeffrey Gahan, Brett A Johnson, Shashank R Sirsi, Baowei Fei
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引用次数: 0
Abstract
Prostate cancer ranks among the most prevalent types of cancer in males, prompting a demand for early detection and noninvasive diagnostic techniques. This paper explores the potential of ultrasound radiofrequency (RF) data to study different anatomic zones of the prostate. The study leverages RF data's capacity to capture nuanced acoustic information from clinical transducers. The research focuses on the peripheral zone due to its high susceptibility to cancer. The feasibility of utilizing RF data for classification is evaluated using ex-vivo whole prostate specimens from human patients. Ultrasound data, acquired using a phased array transducer, is processed, and correlated with B-mode images. A range filter is applied to highlight the peripheral zone's distinct features, observed in both RF data and 3D plots. Radiomic features were extracted from RF data to enhance tissue characterization and segmentation. The study demonstrated RF data's ability to differentiate tissue structures and emphasizes its potential for prostate tissue classification, addressing the current limitations of ultrasound imaging for prostate management. These findings advocate for the integration of RF data into ultrasound diagnostics, potentially transforming prostate cancer diagnosis and management in the future.
前列腺癌是男性发病率最高的癌症之一,因此需要早期检测和无创诊断技术。本文探讨了超声射频(RF)数据在研究前列腺不同解剖区域方面的潜力。该研究利用射频数据从临床传感器捕捉细微声学信息的能力。研究重点是外周区,因为该区域极易发生癌症。利用射频数据进行分类的可行性是通过人类患者的体外前列腺标本进行评估的。使用相控阵换能器获取的超声波数据经过处理,并与 B 型图像相关联。应用范围滤波器来突出外周区的明显特征,这些特征在射频数据和三维图中都能观察到。从射频数据中提取放射组学特征,以增强组织特征描述和分割。该研究证明了射频数据区分组织结构的能力,并强调了其在前列腺组织分类方面的潜力,解决了目前超声成像在前列腺管理方面的局限性。这些研究结果主张将射频数据整合到超声诊断中,从而有可能在未来改变前列腺癌的诊断和管理。