Eimen Rachel, Krzyzanowska Halina, Scarpato Kristen R, Bowden Audrey K
Vanderbilt University, Vanderbilt Biophotonics Center, Department of Biomedical Engineering, Nashville, Tennessee, United States.
Vanderbilt University Medical Center, Department of Urology, Nashville, Tennessee, United States.
J Med Imaging (Bellingham). 2024 May;11(3):034002. doi: 10.1117/1.JMI.11.3.034002. Epub 2024 May 17.
In the current clinical standard of care, cystoscopic video is not routinely saved because it is cumbersome to review. Instead, clinicians rely on brief procedure notes and still frames to manage bladder pathology. Preserving discarded data via 3D reconstructions, which are convenient to review, has the potential to improve patient care. However, many clinical videos are collected by fiberscopes, which are lower cost but induce a pattern on frames that inhibit 3D reconstruction. The aim of our study is to remove the honeycomb-like pattern present in fiberscope-based cystoscopy videos to improve the quality of 3D bladder reconstructions.
Our study introduces an algorithm that applies a notch filtering mask in the Fourier domain to remove the honeycomb-like pattern from clinical cystoscopy videos collected by fiberscope as a preprocessing step to 3D reconstruction. We produce 3D reconstructions with the video before and after removing the pattern, which we compare with a metric termed the area of reconstruction coverage (), defined as the surface area (in pixels) of the reconstructed bladder. All statistical analyses use paired -tests.
Preprocessing using our method for pattern removal enabled reconstruction for all () cystoscopy videos included in the study and produced a statistically significant increase in bladder coverage ().
This algorithm for pattern removal increases bladder coverage in 3D reconstructions and automates mask generation and application, which could aid implementation in time-starved clinical environments. The creation and use of 3D reconstructions can improve documentation of cystoscopic findings for future surgical navigation, thus improving patient treatment and outcomes.
在当前的临床护理标准中,膀胱镜检查视频通常不被保存,因为回顾起来很麻烦。相反,临床医生依靠简短的手术记录和静态图像来处理膀胱病变。通过便于回顾的三维重建来保存被丢弃的数据,有可能改善患者护理。然而,许多临床视频是由纤维镜采集的,纤维镜成本较低,但会在图像帧上产生一种图案,从而抑制三维重建。我们研究的目的是去除基于纤维镜的膀胱镜检查视频中存在的蜂窝状图案,以提高三维膀胱重建的质量。
我们的研究引入了一种算法,该算法在傅里叶域应用带阻滤波掩码,以从纤维镜采集的临床膀胱镜检查视频中去除蜂窝状图案,作为三维重建的预处理步骤。我们对去除图案前后的视频进行三维重建,并将其与一个称为重建覆盖面积()的指标进行比较,该指标定义为重建膀胱的表面积(以像素为单位)。所有统计分析均使用配对检验。
使用我们的图案去除方法进行预处理,使得本研究中纳入的所有()膀胱镜检查视频都能够进行重建,并且膀胱覆盖面积有统计学意义的增加()。
这种图案去除算法增加了三维重建中的膀胱覆盖面积,并实现了掩码生成和应用的自动化,这有助于在时间紧迫的临床环境中实施。三维重建的创建和使用可以改善膀胱镜检查结果的记录,以便未来进行手术导航,从而改善患者的治疗和预后。