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Framework for a Computer-Aided Treatment Prediction (CATP) System for Breast Cancer
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作者 Emad Abd Al Rahman Nur Intan Raihana Ruhaiyem +1 位作者 Majed Bouchahma Kamarul Imran Musa 《Intelligent Automation & Soft Computing》 SCIE 2023年第6期3007-3028,共22页
This study offers a framework for a breast cancer computer-aided treat-ment prediction(CATP)system.The rising death rate among women due to breast cancer is a worldwide health concern that can only be addressed by ear... This study offers a framework for a breast cancer computer-aided treat-ment prediction(CATP)system.The rising death rate among women due to breast cancer is a worldwide health concern that can only be addressed by early diagno-sis and frequent screening.Mammography has been the most utilized breast ima-ging technique to date.Radiologists have begun to use computer-aided detection and diagnosis(CAD)systems to improve the accuracy of breast cancer diagnosis by minimizing human errors.Despite the progress of artificial intelligence(AI)in the medical field,this study indicates that systems that can anticipate a treatment plan once a patient has been diagnosed with cancer are few and not widely used.Having such a system will assist clinicians in determining the optimal treatment plan and avoid exposing a patient to unnecessary hazardous treatment that wastes a significant amount of money.To develop the prediction model,data from 336,525 patients from the SEER dataset were split into training(80%),and testing(20%)sets.Decision Trees,Random Forest,XGBoost,and CatBoost are utilized with feature importance to build the treatment prediction model.The best overall Area Under the Curve(AUC)achieved was 0.91 using Random Forest on the SEER dataset. 展开更多
关键词 BREASTCANCER MACHINELEARNING featureimportance featureselection treatment prediction SEER dataset computer-aided treatment prediction(CATP) clinical decision support system
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Wood species identification using spectral reflectance feature and optimal illumination radian design 被引量:3
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作者 Peng Zhao Jun Cao 《Journal of Forestry Research》 SCIE CAS CSCD 2016年第1期219-224,共6页
We developed a scheme based on wood surface novel wood recognition spectral features that aimed to solve three problems. First was elimination of noise in some bands of wood spectral reflection curves. Second was imp... We developed a scheme based on wood surface novel wood recognition spectral features that aimed to solve three problems. First was elimination of noise in some bands of wood spectral reflection curves. Second was improvement of wood feature selection based on analysis of wood spectral data. The wood spectral band is 350-2500 nm, a 2150D vector with a spectral sampling interval of 1 nm. We developed a feature selection proce- dure and a filtering procedure by solving the eigenvalues of the dispersion matrix. Third, we optimized the design for the indoor radian's mounting height. We used a genetic algorithm to solve the optimal radian's height so that the spectral reflection curves had the best classification infor- mation for wood species. Experiments on fivecommon wood species in northeast China showed overall recogni- tion accuracy 〉95 % at optimal recognition velocity. 展开更多
关键词 Wood species identification featureselection Radian Genetic algorithm Spectral analysis
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