Artificial intelligence based prediction on lung cancer risk factors
using deep learning
- URL: http://arxiv.org/abs/2304.05065v1
- Date: Tue, 11 Apr 2023 08:57:15 GMT
- Title: Artificial intelligence based prediction on lung cancer risk factors
using deep learning
- Authors: Muhammad Sohaib, Mary Adewunmi
- Abstract summary: Capturing and defining symptoms at an early stage is one of the most difficult phases for patients.
We developed a model that can detect lung cancer with a remarkably high level of accuracy using the deep learning approach.
We found that our model achieved an accuracy of 94% and a minimum loss of 0.1%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this proposed work, we identified the significant research issues on lung
cancer risk factors. Capturing and defining symptoms at an early stage is one
of the most difficult phases for patients. Based on the history of patients
records, we reviewed a number of current research studies on lung cancer and
its various stages. We identified that lung cancer is one of the significant
research issues in predicting the early stages of cancer disease. This research
aimed to develop a model that can detect lung cancer with a remarkably high
level of accuracy using the deep learning approach (convolution neural
network). This method considers and resolves significant gaps in previous
studies. We compare the accuracy levels and loss values of our model with
VGG16, InceptionV3, and Resnet50. We found that our model achieved an accuracy
of 94% and a minimum loss of 0.1%. Hence physicians can use our convolution
neural network models for predicting lung cancer risk factors in the real
world. Moreover, this investigation reveals that squamous cell carcinoma,
normal, adenocarcinoma, and large cell carcinoma are the most significant risk
factors. In addition, the remaining attributes are also crucial for achieving
the best performance.
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