- Bhagyashree Shah1,
- Abeer Alsadoon ORCID:orcid.org/0000-0002-2309-35401,2,3,4,5,
- P.W.C. Prasad1,
- Ghazi Al-Naymat6 &
- …
- Azam Beg7
263Accesses
Abstract
Deep learning (DL) is a type of machine learning capable of processing large quantities of data to provide analytic results based on a particular framework’s parameters and aims. DL is widely used in a variety of fields, including medicine. Currently, there are various DL-based prediction models for predicting cancer probability and survival. However, the specific problem is that no integrated system can predict cancer survival, probability, and presence in the medical patient’s samples. Therefore, this research investigates the latest literature in the field of DL-based cancer prediction models for predicting the cancer probability and the patient survival rate. The name of this proposed model is Multimodal Incremental Recurrent Deep Neural Network; it can perform the analysis, prediction, and diagnosis of cancer using multi-dimensional data processing. It can also predict the cancer possibility and survival using incremental recurrent neural networks. The components of the proposed taxonomy are Data, Prediction technique, and View (DPV). This research’s contribution is the critical analysis of the latest literature on the DL-based systems that can predict cancer and its outcomes. It provides a theoretical model that can predict the possibility, presence, and survival of cancer by processing multi-dimensional medical samples of the patient to make accurate predictions. We also highlight the importance of the proposed taxonomy.
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We thank the anonymous reviewers of this manuscript submitted for consideration for publication in this journal.
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Authors and Affiliations
School of Computing and Mathematics, Charles Sturt University (CSU), Wagga Wagga, Australia
Bhagyashree Shah, Abeer Alsadoon & P.W.C. Prasad
School of Computer Data and Mathematical Sciences, University of Western Sydney (UWS), Sydney, Australia
Abeer Alsadoon
School of Information Technology, Southern Cross University (SCU), Sydney, Australia
Abeer Alsadoon
Information Technology Department, Asia Pacific International College (APIC), Sydney, Australia
Abeer Alsadoon
Information Technology Department, Kent Institute Australia, Sydney, Australia
Abeer Alsadoon
College of Engineering and IT, Department of Information Technology, Ajman University, Ajman, United Arab Emirates
Ghazi Al-Naymat
College of Information Technology, United Arab Emirates University, Abu Dhabi, United Arab Emirates
Azam Beg
- Bhagyashree Shah
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Shah, B., Alsadoon, A., Prasad, P.et al. DPV: a taxonomy for utilizing deep learning as a prediction technique for various types of cancers detection.Multimed Tools Appl80, 21339–21361 (2021). https://doi.org/10.1007/s11042-021-10769-4
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