EMPLOYABILITY OF DEEP LEARNING TOOLS AND TECHNIQUES IN THE EARLY DETECTION AND DIAGNOSIS OF LUNG CANCER

Arnav Chawla
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Abstract

These researchers assume that the mortality rate of individuals because of lung breakdown. One of the significant causes is smoking cigarettes, which have cancer-causing agents that harm the cells that streak the lungs. Early conclusion and treatment of the infection is an imperative way to deal with beating this disease. The proposed paper explores various perspectives on determining the carcinogenic lung module through research reviews. It intends to present a graphical processing unit (GPU) for the sped-up continuous discovery of cellular research in the lungs utilizing deep learning come closer from x-ray, CT-scan and bronchoscopy images.
深度学习工具和技术在肺癌早期检测和诊断中的就业能力
这些研究人员假设,由于肺衰竭的个体死亡率。其中一个重要原因是吸烟,它含有致癌物质,会损害肺部的细胞。早期诊断和治疗感染是应对这一疾病的必要途径。本文拟通过研究综述探讨确定致癌性肺模块的各种观点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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