Srivastava Durgesh, Srivastava Santosh Kumar, Khan Surbhi Bhatia, Singh Hare Ram, Maakar Sunil K, Agarwal Ambuj Kumar, Malibari Areej A, Albalawi Eid
Department of Computer Science and Engineering, Sharda School of Engineering and Technology, Sharda University, Greater Noida 201310, India.
Chitkara Institute of Engineering and Technology, Chitkara University, Punjab 140601, India.
Diagnostics (Basel). 2023 Nov 20;13(22):3485. doi: 10.3390/diagnostics13223485.
According to the WHO (World Health Organization), lung cancer is the leading cause of cancer deaths globally. In the future, more than 2.2 million people will be diagnosed with lung cancer worldwide, making up 11.4% of every primary cause of cancer. Furthermore, lung cancer is expected to be the biggest driver of cancer-related mortality worldwide in 2020, with an estimated 1.8 million fatalities. Statistics on lung cancer rates are not uniform among geographic areas, demographic subgroups, or age groups. The chance of an effective treatment outcome and the likelihood of patient survival can be greatly improved with the early identification of lung cancer. Lung cancer identification in medical pictures like CT scans and MRIs is an area where deep learning (DL) algorithms have shown a lot of potential. This study uses the Hybridized Faster R-CNN (HFRCNN) to identify lung cancer at an early stage. Among the numerous uses for which faster R-CNN has been put to good use is identifying critical entities in medical imagery, such as MRIs and CT scans. Many research investigations in recent years have examined the use of various techniques to detect lung nodules (possible indicators of lung cancer) in scanned images, which may help in the early identification of lung cancer. One such model is HFRCNN, a two-stage, region-based entity detector. It begins by generating a collection of proposed regions, which are subsequently classified and refined with the aid of a convolutional neural network (CNN). A distinct dataset is used in the model's training process, producing valuable outcomes. More than a 97% detection accuracy was achieved with the suggested model, making it far more accurate than several previously announced methods.
根据世界卫生组织(WHO)的数据,肺癌是全球癌症死亡的主要原因。未来,全球将有超过220万人被诊断出患有肺癌,占所有主要癌症病因的11.4%。此外,预计2020年肺癌将成为全球癌症相关死亡率的最大驱动因素,预计死亡人数达180万。肺癌发病率的统计数据在不同地理区域、人口亚组或年龄组之间并不统一。早期发现肺癌可以大大提高有效治疗结果的几率和患者存活的可能性。在CT扫描和MRI等医学图像中识别肺癌是深度学习(DL)算法显示出巨大潜力的领域。本研究使用混合更快区域卷积神经网络(HFRCNN)来早期识别肺癌。更快区域卷积神经网络有许多很好的应用,其中之一是识别医学图像(如MRI和CT扫描)中的关键实体。近年来,许多研究调查了使用各种技术来检测扫描图像中的肺结节(肺癌的可能指标),这可能有助于早期发现肺癌。其中一个这样的模型就是HFRCNN,它是一种基于区域的两阶段实体检测器。它首先生成一组提议区域,随后借助卷积神经网络(CNN)对这些区域进行分类和细化。在模型的训练过程中使用了一个独特的数据集,产生了有价值的结果。所提出的模型实现了超过97%的检测准确率,使其比之前公布的几种方法准确得多。