Treatment Planning in Smart Medical: A Sustainable Strategy

With the rapid development of both ubiquitous computing and the mobile internet, big data technology is gradually penetrating into various applications, such as smart traffic, smart city, and smart medical. In particular, smart medical, which is one core part of a smart city, is changing the medical structure. Specifically, it is improving treatment planning for various diseases. Since multiple treatment plans generated from smart medical have their own unique treatment costs, pollution effects, side-effects for patients, and so on, determining a sustainable strategy for treatment planning is becoming very critical in smart medical. From the sustainable point of view, this paper first presents a three-dimensional evaluation model for representing the raw medical data and then proposes a sustainable strategy for treatment planning based on the representation model. Finally, a case study on treatment planning for the group of “computer autism” patients is then presented for demonstrating the feasibility and usability of the proposed strategy.

[1]  Fei Hao,et al.  Green Treatment Plan Selection Based on Three Dimensional Fuzzy Evaluation Model , 2015, CSA/CUTE.

[2]  Heyoung Lee,et al.  The SAMS: Smartphone Addiction Management System and Verification , 2013, Journal of Medical Systems.

[3]  Zheng Pei,et al.  Linguistic Values Based Intelligent Information Processing: Theory, Methods and Applications , 2010 .

[4]  Abdul Hanan Abdullah,et al.  Smart Environment as a Service: Three Factor Cloud Based User Authentication for Telecare Medical Information System , 2013, Journal of Medical Systems.

[5]  Zhao Xiao-liang Multi-Level Fuzzy Evaluation Method for Radar Anti-Jamming Effectiveness , 2012 .

[6]  G. Tzeng,et al.  Evaluating sustainable fishing development strategies using fuzzy MCDM approach , 2005 .

[7]  Laurence T. Yang,et al.  A Tensor-Based Approach for Big Data Representation and Dimensionality Reduction , 2014, IEEE Transactions on Emerging Topics in Computing.

[8]  Om Prakash Verma,et al.  Simple Fuzzy Rule Based Edge Detection , 2013, J. Inf. Process. Syst..

[9]  Rajiv Kumar,et al.  Fuzzy-Membership Based Writer Identification from Handwritten Devnagari Script , 2017, J. Inf. Process. Syst..

[10]  Song Zhenduo Plow Plane Multi-level Fuzzy Evaluation Based on Gray Level Correlation Decision Model and Entropy Value Law , 2012 .

[11]  Laurence T. Yang,et al.  MobiFuzzyTrust: An Efficient Fuzzy Trust Inference Mechanism in Mobile Social Networks , 2014, IEEE Transactions on Parallel and Distributed Systems.

[12]  Panjai Tantatsanawong,et al.  Imputation of Medical Data Using Subspace Condition Order Degree Polynomials , 2014, J. Inf. Process. Syst..

[13]  Guy Merlin Ngounou,et al.  Optimization of Noise in Non-integrated Instrumentation Amplifier for the Amplification of Very Low Electrophisiological Signals. Case of Electro Cardio Graphic Signals (ECG). , 2014, Journal of Medical Systems.

[14]  Oscar Mayora-Ibarra,et al.  Mobile phones as medical devices in mental disorder treatment: an overview , 2014, Personal and Ubiquitous Computing.

[15]  Herman Akdag,et al.  The evaluation of hospital service quality by fuzzy MCDM , 2014, Appl. Soft Comput..

[16]  Jos De Roo,et al.  Clinical Decision Support System based on Fuzzy Cognitive Maps , 2015 .