Azer Samy A
Department of Medical Education, King Saud University College of Medicine, Riyadh 11461, Saudi Arabia.
World J Gastrointest Oncol. 2019 Dec 15;11(12):1218-1230. doi: 10.4251/wjgo.v11.i12.1218.
Artificial intelligence, such as convolutional neural networks (CNNs), has been used in the interpretation of images and the diagnosis of hepatocellular cancer (HCC) and liver masses. CNN, a machine-learning algorithm similar to deep learning, has demonstrated its capability to recognise specific features that can detect pathological lesions.
To assess the use of CNNs in examining HCC and liver masses images in the diagnosis of cancer and evaluating the accuracy level of CNNs and their performance.
The databases PubMed, EMBASE, and the Web of Science and research books were systematically searched using related keywords. Studies analysing pathological anatomy, cellular, and radiological images on HCC or liver masses using CNNs were identified according to the study protocol to detect cancer, differentiating cancer from other lesions, or staging the lesion. The data were extracted as per a predefined extraction. The accuracy level and performance of the CNNs in detecting cancer or early stages of cancer were analysed. The primary outcomes of the study were analysing the type of cancer or liver mass and identifying the type of images that showed optimum accuracy in cancer detection.
A total of 11 studies that met the selection criteria and were consistent with the aims of the study were identified. The studies demonstrated the ability to differentiate liver masses or differentiate HCC from other lesions ( = 6), HCC from cirrhosis or development of new tumours ( = 3), and HCC nuclei grading or segmentation ( = 2). The CNNs showed satisfactory levels of accuracy. The studies aimed at detecting lesions ( = 4), classification ( = 5), and segmentation ( = 2). Several methods were used to assess the accuracy of CNN models used.
The role of CNNs in analysing images and as tools in early detection of HCC or liver masses has been demonstrated in these studies. While a few limitations have been identified in these studies, overall there was an optimal level of accuracy of the CNNs used in segmentation and classification of liver cancers images.
人工智能,如卷积神经网络(CNN),已被用于图像解读以及肝细胞癌(HCC)和肝脏肿块的诊断。CNN是一种类似于深度学习的机器学习算法,已证明其能够识别可检测病理病变的特定特征。
评估CNN在检查HCC和肝脏肿块图像以进行癌症诊断以及评估CNN的准确性水平及其性能方面的应用。
使用相关关键词系统检索了PubMed、EMBASE和Web of Science数据库以及研究书籍。根据研究方案,确定使用CNN分析HCC或肝脏肿块的病理解剖、细胞和放射图像的研究,以检测癌症、区分癌症与其他病变或对病变进行分期。按照预定义的提取方式提取数据。分析了CNN在检测癌症或癌症早期阶段的准确性水平和性能。该研究的主要结果是分析癌症或肝脏肿块的类型,并确定在癌症检测中显示出最佳准确性的图像类型。
共确定了11项符合选择标准且与研究目的一致的研究。这些研究证明了区分肝脏肿块或将HCC与其他病变区分开来的能力(n = 6)、将HCC与肝硬化或新肿瘤的发展区分开来的能力(n = 3)以及HCC细胞核分级或分割的能力(n = 2)。CNN显示出令人满意的准确性水平。这些研究的目的是检测病变(n = 4)、分类(n = 5)和分割(n = 2)。使用了几种方法来评估所使用的CNN模型的准确性。
这些研究证明了CNN在分析图像以及作为早期检测HCC或肝脏肿块的工具方面的作用。虽然在这些研究中发现了一些局限性,但总体而言,用于肝癌图像分割和分类的CNN的准确性达到了最佳水平。