» Articles » PMID: 30410714

Privacy Preserving -Nearest Neighbor for Medical Diagnosis in E-Health Cloud

Overview
Journal J Healthc Eng
Date 2018 Nov 10
PMID 30410714
Citations 4
Authors
Affiliations
Soon will be listed here.
Abstract

Cloud computing is highly suitable for medical diagnosis in e-health services where strong computing ability is required. However, in spite of the huge benefits of adopting the cloud computing, the medical diagnosis field is not yet ready to adopt the cloud computing because it contains sensitive data and hence using the cloud computing might cause a great concern in privacy infringement. For instance, a compromised e-health cloud server might expose the medical dataset outsourced from multiple medical data owners or infringe on the privacy of a patient inquirer by leaking his/her symptom or diagnosis result. In this paper, we propose a medical diagnosis system using e-health cloud servers in a privacy preserving manner when medical datasets are owned by multiple data owners. The proposed system is the first one that achieves the privacy of medical dataset, symptoms, and diagnosis results and hides the data access pattern even from e-health cloud servers performing computations using the data while it is still robust against collusion of the entities. As a building block of the proposed diagnosis system, we design a novel privacy preserving protocol for finding the data with the highest similarity (PE-FTK) to a given symptom. The protocol reduces the average running time by 35% compared to that of a previous work in the literature. Moreover, the result of the previous work is probabilistic, i.e., the result can contain some error, while the result of our PE-FTK is deterministic, i.e., the result is correct without any error probability.

Citing Articles

Leveraging explainable machine learning to identify gait biomechanical parameters associated with anterior cruciate ligament injury.

Kokkotis C, Moustakidis S, Tsatalas T, Ntakolia C, Chalatsis G, Konstadakos S Sci Rep. 2022; 12(1):6647.

PMID: 35459787 PMC: 9026057. DOI: 10.1038/s41598-022-10666-2.


FedDPGAN: Federated Differentially Private Generative Adversarial Networks Framework for the Detection of COVID-19 Pneumonia.

Zhang L, Shen B, Barnawi A, Xi S, Kumar N, Wu Y Inf Syst Front. 2021; 23(6):1403-1415.

PMID: 34149305 PMC: 8204125. DOI: 10.1007/s10796-021-10144-6.


Artificial intelligence with multi-functional machine learning platform development for better healthcare and precision medicine.

Ahmed Z, Mohamed K, Zeeshan S, Dong X Database (Oxford). 2020; 2020.

PMID: 32185396 PMC: 7078068. DOI: 10.1093/database/baaa010.


Private Hospital Workflow Optimization via Secure k-Means Clustering.

Spini G, van Heesch M, Veugen T, Chatterjea S J Med Syst. 2019; 44(1):8.

PMID: 31784842 PMC: 6884435. DOI: 10.1007/s10916-019-1473-4.

References
1.
Montani S, Portinale L, Leonardi G, Bellazzi R, Bellazzi R . Case-based retrieval to support the treatment of end stage renal failure patients. Artif Intell Med. 2005; 37(1):31-42. DOI: 10.1016/j.artmed.2005.06.003. View

2.
. Health Insurance Portability and Accountability Act of 1996. Public Law 104-191. US Statut Large. 1996; 110:1936-2103. View

3.
Vilaplana J, Solsona F, Abella , Filgueira R, Rius J . The cloud paradigm applied to e-Health. BMC Med Inform Decis Mak. 2013; 13:35. PMC: 3618213. DOI: 10.1186/1472-6947-13-35. View

4.
Abbas A, Khan S . A review on the state-of-the-art privacy-preserving approaches in the e-health clouds. IEEE J Biomed Health Inform. 2014; 18(4):1431-41. DOI: 10.1109/JBHI.2014.2300846. View