Park Sang-Ho, Park Hee-Min, Baek Kwang-Ryul, Ahn Hong-Min, Lee In Young, Son Gyung Mo
Department of Electronic Engineering, Pusan National University, Busan 46241, South Korea.
Department of Surgery, Pusan National University Yangsan Hospital, Gyeongsangnam-do 50612, South Korea.
World J Gastroenterol. 2020 Nov 28;26(44):6945-6962. doi: 10.3748/wjg.v26.i44.6945.
Colonic perfusion status can be assessed easily by indocyanine green (ICG) angiography to predict ischemia related anastomotic complications during laparoscopic colorectal surgery. Recently, various parameter-based perfusion analysis have been studied for quantitative evaluation, but the analysis results differ depending on the use of quantitative parameters due to differences in vascular anatomical structure. Therefore, it can help improve the accuracy and consistency by artificial intelligence (AI) based real-time analysis microperfusion (AIRAM).
To evaluate the feasibility of AIRAM to predict the risk of anastomotic complication in the patient with laparoscopic colorectal cancer surgery.
The ICG curve was extracted from the region of interest (ROI) set in the ICG fluorescence video of the laparoscopic colorectal surgery. Pre-processing was performed to reduce AI performance degradation caused by external environment such as background, light source reflection, and camera shaking using MATLAB 2019 on an I7-8700k Intel central processing unit (CPU) PC. AI learning and evaluation were performed by dividing into a training patient group ( = 50) and a test patient group ( = 15). Training ICG curve data sets were classified and machine learned into 25 ICG curve patterns using a self-organizing map (SOM) network. The predictive reliability of anastomotic complications in a trained SOM network is verified using test set.
AI-based risk and the conventional quantitative parameters including , time ratio (TR), and rising slope (RS) were consistent when colonic perfusion was favorable as steep increasing ICG curve pattern. When the ICG graph pattern showed stepped rise, the accuracy of conventional quantitative parameters decreased, but the AI-based classification maintained accuracy consistently. The receiver operating characteristic curves for conventional parameters and AI-based classification were comparable for predicting the anastomotic complication risks. Statistical performance verifications were improved in the AI-based analysis. AI analysis was evaluated as the most accurate parameter to predict the risk of anastomotic complications. The F1 score of the AI-based method increased by 31% for , 8% for TR, and 8% for RS. The processing time of AIRAM was measured as 48.03 s, which was suitable for real-time processing.
In conclusion, AI-based real-time microcirculation analysis had more accurate and consistent performance than the conventional parameter-based method.
在腹腔镜结直肠手术中,通过吲哚菁绿(ICG)血管造影可轻松评估结肠灌注状态,以预测与缺血相关的吻合口并发症。近来,已对各种基于参数的灌注分析进行了研究以进行定量评估,但由于血管解剖结构的差异,分析结果会因定量参数的使用不同而有所差异。因此,基于人工智能(AI)的实时分析微灌注(AIRAM)有助于提高准确性和一致性。
评估AIRAM预测腹腔镜结直肠癌手术患者吻合口并发症风险的可行性。
从腹腔镜结直肠手术的ICG荧光视频中设置的感兴趣区域(ROI)提取ICG曲线。在配备I7 - 8700k英特尔中央处理器(CPU)的PC上使用MATLAB 2019进行预处理,以减少由背景、光源反射和相机抖动等外部环境导致的AI性能下降。通过分为训练患者组(n = 50)和测试患者组(n = 15)进行AI学习和评估。使用自组织映射(SOM)网络将训练ICG曲线数据集分类并机器学习为25种ICG曲线模式。使用测试集验证训练后的SOM网络中吻合口并发症的预测可靠性。
当结肠灌注良好呈陡峭上升的ICG曲线模式时,基于AI的风险与包括 、时间比(TR)和上升斜率(RS)在内的传统定量参数一致。当ICG图形模式呈阶梯状上升时,传统定量参数的准确性下降,但基于AI的分类始终保持准确性。传统参数和基于AI的分类的受试者工作特征曲线在预测吻合口并发症风险方面具有可比性。基于AI的分析在统计性能验证方面有所改进。AI分析被评估为预测吻合口并发症风险最准确的参数。基于AI的方法的F1分数对于 增加了31%,对于TR增加了8%,对于RS增加了8%。AIRAM的处理时间测量为48.03秒,适合实时处理。
总之,基于AI的实时微循环分析比传统的基于参数的方法具有更准确和一致的性能。