iMAGE cloud: medical image processing as a service for regional healthcare in a hybrid cloud environment

ObjectivesTo handle the emergence of the regional healthcare ecosystem, physicians and surgeons in various departments and healthcare institutions must process medical images securely, conveniently, and efficiently, and must integrate them with electronic medical records (EMRs). In this manuscript, we propose a software as a service (SaaS) cloud called the iMAGE cloud.MethodsA three-layer hybrid cloud was created to provide medical image processing services in the smart city of Wuxi, China, in April 2015. In the first step, medical images and EMR data were received and integrated via the hybrid regional healthcare network. Then, traditional and advanced image processing functions were proposed and computed in a unified manner in the high-performance cloud units. Finally, the image processing results were delivered to regional users using the virtual desktop infrastructure (VDI) technology. Security infrastructure was also taken into consideration.ResultsIntegrated information query and many advanced medical image processing functions—such as coronary extraction, pulmonary reconstruction, vascular extraction, intelligent detection of pulmonary nodules, image fusion, and 3D printing—were available to local physicians and surgeons in various departments and healthcare institutions.ConclusionsImplementation results indicate that the iMAGE cloud can provide convenient, efficient, compatible, and secure medical image processing services in regional healthcare networks. The iMAGE cloud has been proven to be valuable in applications in the regional healthcare system, and it could have a promising future in the healthcare system worldwide.

[1]  R P Patel Cloud computing and virtualization technology in radiology. , 2012, Clinical radiology.

[2]  Sun Shen-shen Pulmonary Nodule Segmentation Based on EM and Mean-shift , 2009 .

[3]  L Xing,et al.  SU-D-BRD-02: A Web-Based Image Processing and Plan Evaluation Platform (WIPPEP) for Future Cloud-Based Radiotherapy. , 2014, Medical physics.

[4]  Shawn T. Brown,et al.  The Regional Healthcare Ecosystem Analyst (RHEA): a simulation modeling tool to assist infectious disease control in a health system. , 2013, Journal of the American Medical Informatics Association : JAMIA.

[5]  Paul G Nagy,et al.  Cloud computing in medical imaging. , 2013, Medical physics.

[6]  Lei Xing,et al.  SU-D-BRD-01: Cloud-Based Radiation Treatment Planning: Performance Evaluation of Dose Calculation and Plan Optimization. , 2014, Medical physics.

[7]  Lingfeng Wen,et al.  A patient-centric distribution architecture for medical image sharing , 2013, Health Information Science and Systems.

[8]  Sooyoung Yoo,et al.  Economic analysis of cloud-based desktop virtualization implementation at a hospital , 2012, BMC Medical Informatics and Decision Making.

[9]  Wiro J Niessen,et al.  Tissue segmentation of head and neck CT images for treatment planning: a multiatlas approach combined with intensity modeling. , 2013, Medical physics.

[10]  Medhat Mousa Virtualization Technology | Revolution of Virtual Desktop Infrastructure , 2012 .

[11]  Li Bai,et al.  A Cloud Computing Medical Image Analysis and Collaboration Platform , 2011, CLOSER 2011.

[12]  Jesus A. Gonzalez,et al.  A Cloud Scalable Platform for DICOM Image Analysis as a Tool for Remote Medical Support , 2013, eTELEMED 2013.

[13]  Marek Kowal,et al.  Computer-aided diagnosis of breast cancer based on fine needle biopsy microscopic images , 2013, Comput. Biol. Medicine.

[14]  P Mishra,et al.  TU-CD-304-11: Veritas 2.0: A Cloud-Based Tool to Facilitate Research and Innovation , 2015 .

[15]  Ilango Paramasivam,et al.  An Enterprise Oriented View on the Cloud Integration Approaches – Hybrid Cloud and Big Data☆ , 2015 .

[16]  Christoph Palm,et al.  Send Orders of Reprints at Reprints@benthamscience.net Viewpoints on Medical Image Processing: from Science to Application , 2022 .

[17]  Hong Yan,et al.  Image Threshold Processing Based on Simulated Annealing and OTSU Method , 2016 .

[18]  Changming Sun,et al.  Cloud based toolbox for image analysis, processing and reconstruction tasks. , 2015, Advances in experimental medicine and biology.

[19]  David Dagan Feng,et al.  SparkMed: A Framework for Dynamic Integration of Multimedia Medical Data Into Distributed m-Health Systems , 2012, IEEE Transactions on Information Technology in Biomedicine.

[20]  Hans-Ulrich Prokosch,et al.  A scoping review of cloud computing in healthcare , 2015, BMC Medical Informatics and Decision Making.