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A Trustworthy Computing of ADAPT Principle Guaranteeing Genuine Medical Image
0
Zitationen
4
Autoren
2011
Jahr
Abstract
Cancer is usually treated with surgery and probably with chemotherapy or radiation. A medical malpractice of breast cancer has become an urgent need to clear the mess based on technical, workable strategy. The paper tries to: (i) understand a general diagnosis, (ii) pay attentions on how to improve the right judgments of possible misinterpretation, (iii) focus on breast cancer malpractice combined with digital medical image, (iv) present a trustworthy image based upon ADAPT principle, (v) utilize steganography concepts to assure data confidentiality, integrity, and authenticity. The physician's failure to diagnose medical images can result a patient's death, or cause enormous medical bills. A workable strategy of trustworthy computing in APAPT principle is proposed to improve the information security issue of mammography image, and establish the trustworthy computing of image diagnoses.
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