Analysis of Different Classification Algorithms for Lung Cancer Detection.

Project Code :TCMAPY570

Objective

The main objective of the project is to implement a computer-aided diagnosis system for automatic Lung Cancer detection using Lung CT Scan images.

Abstract

Breast cancer is considered one of the primary causes of mortality among women aged 20–59 worldwide. Early detection and treatment can allow patients to have proper treatment and consequently reduce rate of morbidity of breast cancer. Research indicates that most experienced physicians can diagnose cancer with 79% accuracy while 91% correct diagnosis is achieved using deep learning techniques. In this paper, we present the most recent breast cancer detection and classification models that are deep learning based models by analyzing them in the form of comparative study. Also, in this paper, the datasets that are public for use and popular as well are listed in the recent work to facilitate any new experiments and comparisons. The comparative analysis shows that the recent highest accuracy models based on simple detection and the classification architectures are Convolutional Neural Network (CNN) and transfer learning model (MobileNet).

Keywords: CNN, transfer learning, breast cancer, deep learning.

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

H/W Configuration:

  • Processor:I3/Intel Processor
  • Hard Disk:160GB
  • Key Board: Standard Windows Keyboard
  • Mouse: Two or Three Button Mouse
  • Monitor: SVGA
  • RAM :  8Gb

 

S/W Configuration:

Operating System:   Windows 7/8/10                 

IDE:   Pycharm

Libraries Used : Numpy, Tensorflow, Keras, Flask

Technology : Python 3.6+

 

Learning Outcomes

Practical exposure to

·         Hardware and software tools

·         Solution providing for real time problems

·         Working with team/individual

·         Work on creative ideas

·         Testing techniques

·         Error correction mechanisms

·         What type of technology versions is used?

·         Working of Tensor Flow

·         Implementation of Deep Learning techniques

·         Working of CNN algorithm

·         Working of Transfer Learning methods

·         Building of model creations

·         Scope of project

·         Applications of the project

·         About Python language

·         About Deep Learning Frameworks

·         Use of Data Science

Demo Video

mail-banner
call-banner
contact-banner
Request Video
Final year projects