Abstract PO-003: Early detection of breast cancer during the Covid-19 pandemic using artificial intelligence neural networks

Author(s):  
Subash Kumar
Author(s):  
Mridul Sharma

These days one of the major inevitable ailments for females is bosom malignancy. The appropriate medication and early findings are important stages to take to thwart this ailment. Although, it's not easy to recognize due to its few vulnerabilities and lack of data. Can use artificial intelligence to create devices that can help doctors and healthcare workers to early detection of this cancer. In This research, we investigate three specific machine learning algorithms widely used to detect bosom ailments in the breast region. These algorithms are Support vector machine (SVM), Bayesian Networks (BN) and Random Forest (RF). The output in this research is based on the State-of-the-art technique.


2021 ◽  
Vol 25 (06) ◽  

For the month of June 2020, in our Features section, we have an article contribution by Dr Jonathan Teh a Consultant Radiation Oncologist at Asian Alliance Radiation & Oncology (AARO) on how SBRT can provide hope for inoperable kidney cancer. Also in the Features section, we commemorate World Health Day with Viatris. In the Columns section, look at how the microbiome can be a gateway to wellness in an article contribution by Daniel Ramón Vidal, Vice President of R&D Health & Wellness at ADM. Also, explore how artificial intelligence and advanced analytics can help in enhancing clinical trial process. In the Spotlights section, we interviewed Jeong Jae Youn, Country Manager for GE Healthcare Singapore & Emerging ASEAN to dive into mammograms and ultrasound methods used for early detection of signs of breast cancer.


2019 ◽  
Vol 1 (1) ◽  
pp. 466-482 ◽  
Author(s):  
Vinícius Silva Araújo ◽  
Augusto Guimarães ◽  
Paulo de Campos Souza ◽  
Thiago Silva Rezende ◽  
Vanessa Souza Araújo

Research on predictions of breast cancer grows in the scientific community, providing data on studies in patient surveys. Predictive models link areas of medicine and artificial intelligence to collect data and improve disease assessments that affect a large part of the population, such as breast cancer. In this work, we used a hybrid artificial intelligence model based on concepts of neural networks and fuzzy systems to assist in the identification of people with breast cancer through fuzzy rules. The hybrid model can manipulate the data collected in medical examinations and identify patterns between healthy people and people with breast cancer with an acceptable level of accuracy. These intelligent techniques allow the creation of expert systems based on logical rules of the IF/THEN type. To demonstrate the feasibility of applying fuzzy neural networks, binary pattern classification tests were performed where the dimensions of the problem are used for a model, and the answers identify whether or not the patient has cancer. In the tests, experiments were replicated with several characteristics collected in the examinations done by medical specialists. The results of the tests, compared to other models commonly used for this purpose in the literature, confirm that the hybrid model has a tremendous predictive capacity in the prediction of people with breast cancer maintaining acceptable levels of accuracy with good ability to act on false positives and false negatives, assisting the scientific milieu with its forecasts with the significant characteristic of interpretability of breast cancer. In addition to coherent predictions, the fuzzy neural network enables the construction of systems in high level programming languages to build support systems for physicians’ actions during the initial stages of treatment of the disease with the fuzzy rules found, allowing the construction of systems that replicate the knowledge of medical specialists, disseminating it to other professionals..


Author(s):  
Yos S. Morsi ◽  
Pujiang Shi ◽  
Amal Ahmed Owida

Breast cancer is the second most common cancer in the world and is difficult to accurately identify and treat. Diagnostic computational tools can be used effectively, with high degree of accuracy, to recognize and differentiate between the two known types of breast lesion, namely benign and malignant. These modelling tools include artificial intelligence techniques such as Artificial Neural Networks (ANNs), Fuzzy Logic (FL), Hidden Markov Model (HMM) and Support Vector Machines (SVMs). These tools can identify the important features that play pivotal roles in the classification task, and can aid physicians to diagnose and prognosticate breast cancer. Moreover, recent advancement in nanotechnology indicates that with the aid of nanoparticles, nanowires, nanorobots and nanotubes, the disese of breast cancer can be potentially eradicated totally. The chapter highlights the limitations of the current therapies used in breast cancer and discusses the concept of nanotechnology as a possible future therapy.


2011 ◽  
Vol 20 (03) ◽  
pp. 457-487
Author(s):  
IOANNA ROUSSAKI ◽  
IOANNIS PAPAIOANNOU ◽  
MILTIADES ANAGNOSTOU

Building agents that negotiate on behalf of their owners aiming to maximise their utility is a quite challenging research field in the artificial intelligence domain. In this paper, such agents are enhanced with techniques based on neural networks (NNs) to predict their opponents' negotiation behaviour, thus achieving more profitable results and better resource utilization. The NNs are used to early detect the cases where agreements are not achievable, supporting the decision of the agents to withdraw or not from the negotiation threads. The designed NN-assisted negotiation strategies have been evaluated via extensive experiments and are proven to be very useful.


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