IVCVLGJan 1, 2022

Deep Learning Applications for Lung Cancer Diagnosis: A systematic review

arXiv:2201.00227v178 citations
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of improving lung cancer diagnosis for medical professionals, but it is incremental as a review article summarizing existing work.

This systematic review analyzed 32 articles from 2016 to 2021 to assess deep learning models, particularly CNNs, for diagnosing early-stage lung cancer, highlighting their accuracy and sensitivity in aiding physicians and researchers.

Lung cancer has been one of the most prevalent disease in recent years. According to the research of this field, more than 200,000 cases are identified each year in the US. Uncontrolled multiplication and growth of the lung cells result in malignant tumour formation. Recently, deep learning algorithms, especially Convolutional Neural Networks (CNN), have become a superior way to automatically diagnose disease. The purpose of this article is to review different models that lead to different accuracy and sensitivity in the diagnosis of early-stage lung cancer and to help physicians and researchers in this field. The main purpose of this work is to identify the challenges that exist in lung cancer based on deep learning. The survey is systematically written that combines regular mapping and literature review to review 32 conference and journal articles in the field from 2016 to 2021. After analysing and reviewing the articles, the questions raised in the articles are being answered. This research is superior to other review articles in this field due to the complete review of relevant articles and systematic write up.

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