Bone Cancer Detection using Deep Learning Research Topics
In the wide area of Machine Learning (ML), Deep Learning is a branch of it. This technique is popular because of its multiple layer filtering. By going through this research you can get a better understanding of the topic in detail. Continue reading this research paper to gain more knowledge about Deep learning.
- Define Deep Learning Algorithms
Deep learning is one of the methods employed by ML, which is structured based on the functioning of neural network present in the human brain. This technique uses several layers of nodes which are interconnected to each other in order to understand about representing data in a hierarchical order, just like a neural network that is made artificially. Deep learning technique is mainly used in the area of Natural language Processing (NLP), pattern recognition also speech and image recognition. For training this model, back propagation is used for adjusting various parameters. This will help in minimizing errors by making necessary updates to the weight of loss function gradient. The two main systems which use this type of architecture are Recurrent Neural Networks (RNNs) in sequential data and “Convolutional Neural Networks” (CNNs) in image processing.
- What is Deep Learning Algorithms?
This technique is a sub-section of ML which is used to train the artificial neural network by using multiple layers. This technology is built based on the function and structure of a human brain which has similar function of processing through multiple layers of interconnected neurons. Deep learning became more popular in several fields because of its capability to obtain meaningful content with only raw data that too automatically.
- Where Deep Learning Algorithms is used?
These deep learning algorithms are used in areas like computer vision, image recognition, facial detection, NLP, sentiment analysis and language translation. It is also used in healthcare for analyzing medical image and doing diagnosis. Deep Learning is more important for autonomous systems like robotics, autonomous vehicles and informed decision-making.
- Why Deep Learning Algorithms is proposed? Previous Technology Issues
Moving on to the next section, here we are going to discuss about why this technique is proposed and about the challenges faced by it. This was proposed in order to overcome the issues face by earlier techniques of machine learning. Some of the issues faced by it are mentioned here:
Ineffective pre-processing: Maintaining accuracy while doing classification of medical image depends on the quality of the image. In other words, when removing noise by making use of any ill-suited filters, it may reduce the quality of image.
Poor Segmentation: Segmentation should be done effectively with the help of perfect algorithm and by considering suitable features. When the segmentation is not done properly like not selecting effective approaches or doing manual segmentation, it may lead to poor system performance.
High false positive rate: In order to classify bone cancer there is need of some features like texture and edge from any recent work; but that is not enough for effective classification of bone cancer. So, the system will produce only highly false positive result ratio.
- Algorithms / Protocols
After knowing about the technology, uses of it and the issues faced by them in the earlier stage, now we are going to learn about the algorithms used for this technology. The algorithms provided for Deep Learning to overcome the previous issues faced by it are: “Enhanced Grasshopper Optimization Algorithm” (EnGRop), “Prediction Fine-tuning CapsNet” (PreCap), “Modified DeeplabV3+”, “Enhanced Google Net” (EGooNet), “SubGrade APSP”, “Altered Successive Filter” (ASF) and “Lightweight YOLO5” (LYOLO5).
- Simulation results / Parameters
The approaches which were proposed to overcome the issues faced by Deep Learning in the above section are tested using different methodologies to analyze its performance. The comparison is done by using metrics like Accuracy, Specificity, Sensitivity and F1 Score.
- Dataset LINKS / Important URL
Here are some of the datasets and link provided for you below to gain more knowledge about Deep Learning which can be useful for you:
- https://ieeexplore.ieee.org/document/9186684?denied=
- https://sci-hub.se/https://doi.org/10.1002/col.22581
- https://www.mdpi.com/2077-0472/12/7/931
- Deep Learning Algorithms Applications
In this next section we are going to discuss about the applications of Deep Learning technology. This technology has been employed in many industries, from which some of them are listed here: It is used in computer vision for facial and image recognition, NLP, sentiment analysis and Language translation, also useful in healthcare industries for diagnosing disease and analyzing image. Industries like finance, marketing and autonomous system uses deep learning for its predictive capabilities like pattern recognition and decision-making.
- Topology
Here you are going to learn about the different choices of topologies which can be used in Deep Learning technology. Generally topology refers to methodology and architecture design of the system. Here in this case, topology refers to arrangement of algorithm and steps involved in it, starting from loading image to feature extraction, preprocessing till applying the algorithms of deep learning. A clear topology will help you improve your workflow and efficiency.
- Environment
For a better performance of the system, it needs a suitable environment. Environment means the conditions and criterions required for conducting a research, the factors in it includes data sources, technological or medical settings and imaging technologies. To produce a well-defined result with more robustness and applicability; understanding those environmental conditions are very much important.
- Simulation Tools
Here we provide some simulation software for Deep Learning system, which is established with the usage of Python tool version 3.11.4 and along with MATLAB R2020b.
- Results
After going through this research based on Deep Learning Technology, you can understand in detail about this technology, applications of this technology, different topologies of it, algorithms followed by it also about the limitations and how it can be overcome.
Bone Cancer Detection using Deep Learning Research Ideas
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- Ischemic Heart Disease Prediction Using Machine Learning and Deep Learning Techniques
- People Counting in Public Spaces using Deep Learning-based Object Detection and Tracking Techniques
- Deep Learning for Music: A Systematic Literature Review
- Deep Learning and Grad-CAM for the Diagnosis of Pneumonia Based on X-Rays
- Transfer-Based Deep Learning Technique for PCOS Detection Using Ultrasound Images
- Multi-Task and Few-Shot Learning-Based Fully Automatic Deep Learning Platform for Mobile Diagnosis of Skin Diseases