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Novel Model Determination of Breast Cancer Stage Using

Physical Parameter

by Dr.a.a.ngr Gunawan,mt

Submission date: 27-Apr-2018 10:20PM (UTC+0700) Submission ID: 954749288

File name: a_novel.pdf (232.41K) Word count: 2937

Character count: 15237

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Novel Model Determination of Breast Cancer Stage Using Physical Parameter

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repository.unhas.ac.id

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gdrenice2015.sciencesconf.org

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Lei Zhang, Xieping Gao. "Research on

Translation-Invariant Wavelet Transform for Classification in Mammograms", Third

International Conference on Natural Computation (ICNC 2007), 2007

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Yongcai Mao. "Statistical power for detecting epistasis QTL effects under the F-2 design", Genetics Selection Evolution, 03/2005

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T.F. Doniere, A.P. Dhawan. "A transition criterion for the multigrid expectation

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positron emission tomography", Proceedings of 16th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, 1994

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E. Gruenstein. "Classification Of

Mammographic Microcalcification And

Structural Features Using An Artificial Neural Network", Proceedings of the Annual

International Conference of the IEEE

Engineering in Medicine and Biology Society Volume 13 1991, 1991

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Kadek Budhi Suarsana, Anak Agung Ngurah Gunawan, Ni Nym Ratini. "LPG leakage control using SMS through SIM800L with MQ-2 sensor and stepper motor based on Arduino UNO", Advances in Applied Physics, 2018

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Mohanalin, Beenamol, Prem Kumar Kalra, Nirmal Kumar. "A novel automatic

microcalcification detection technique using Tsallis entropy & a type II fuzzy index",

Computers & Mathematics with Applications, 2010

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Shen-Fu Hsiao, Wei-Ren Shiue. "A high-

throughput, low power architecture and its VLSI implementation for DFT/IDFT computation", 1999 IEEE International Conference on

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Exclude quotes Of f Exclude matches Of f

Acoustics, Speech, and Signal Processing.

Proceedings. ICASSP99 (Cat. No.99CH36258), 1999

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Simara Vieira da Rocha, Geraldo Braz Junior, Aristófanes Corrêa Silva, Anselmo Cardoso de Paiva, Marcelo Gattass. "Texture analysis of masses malignant in mammograms images using a combined approach of diversity index and local binary patterns distribution", Expert Systems with Applications, 2016

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