Ali Saqib, Li Jianqiang, Pei Yan, Khurram Rooha, Rehman Khalil Ur, Rasool Abdul Basit
Faculty of Information Technology, Beijing University of Technology, Beijing 100124, China.
Computer Science Division, University of Aizu, Aizuwakamatsu 965-8580, Japan.
Cancers (Basel). 2021 Nov 4;13(21):5546. doi: 10.3390/cancers13215546.
Thus far, the most common cause of death in the world is cancer. It consists of abnormally expanding areas that are threatening to human survival. Hence, the timely detection of cancer is important to expanding the survival rate of patients. In this survey, we analyze the state-of-the-art approaches for multi-organ cancer detection, segmentation, and classification. This article promptly reviews the present-day works in the breast, brain, lung, and skin cancer domain. Afterwards, we analytically compared the existing approaches to provide insight into the ongoing trends and future challenges. This review also provides an objective description of widely employed imaging techniques, imaging modality, gold standard database, and related literature on each cancer in 2016-2021. The main goal is to systematically examine the cancer diagnosis systems for multi-organs of the human body as mentioned. Our critical survey analysis reveals that greater than 70% of deep learning researchers attain promising results with CNN-based approaches for the early diagnosis of multi-organ cancer. This survey includes the extensive discussion part along with current research challenges, possible solutions, and prospects. This research will endow novice researchers with valuable information to deepen their knowledge and also provide the room to develop new robust computer-aid diagnosis systems, which assist health professionals in bridging the gap between rapid diagnosis and treatment planning for cancer patients.
迄今为止,世界上最常见的死因是癌症。它由异常扩张的区域组成,对人类生存构成威胁。因此,癌症的及时检测对于提高患者的生存率至关重要。在本次调查中,我们分析了多器官癌症检测、分割和分类的最新方法。本文迅速回顾了乳腺癌、脑癌、肺癌和皮肤癌领域的当前研究成果。之后,我们对现有方法进行了分析比较,以洞察当前趋势和未来挑战。本综述还客观描述了2016 - 2021年期间广泛使用的成像技术、成像模态、金标准数据库以及每种癌症的相关文献。主要目标是系统地研究上述人体多器官的癌症诊断系统。我们的批判性调查分析表明,超过70%的深度学习研究人员使用基于卷积神经网络(CNN)的方法对多器官癌症进行早期诊断取得了有前景的结果。本次调查包括广泛的讨论部分以及当前的研究挑战、可能的解决方案和前景。这项研究将为新手研究人员提供有价值的信息,以加深他们的知识,也为开发新的强大的计算机辅助诊断系统提供空间,帮助医疗专业人员弥合癌症患者快速诊断和治疗规划之间的差距。