Corn to sugar process has long faced the risks of high energy consumption and thin ***,it’s hard to upgrade or optimize the process based on mechanism unit operation models due to the high complexity of the related *...
详细信息
Corn to sugar process has long faced the risks of high energy consumption and thin ***,it’s hard to upgrade or optimize the process based on mechanism unit operation models due to the high complexity of the related *** data technology provides a promising solution as its ability to turn huge amounts of data into insights for operational *** this paper,a neural network-based production process modeling and variable importance analysis approach is proposed for corn to sugar processes,which contains data preprocessing,dimensionality reduction,multilayer perceptron/convolutional neural network/recurrent neural network based modeling and extended weights connection *** the established model,dextrose equivalent value is selected as the output,and 654 sites from the DCS system are selected as the *** analysis is first applied to reduce the data dimension to 155,then the inputs are dimensionalized to 50 by means of genetic algorithm ***,variable importance analysis is carried out by the extended weight connection method,and 20 of the most important sites are selected for each neural *** results indicate that the multilayer perceptron and recurrent neural network models have a relative error of less than 0.1%,which have a better prediction result than other models,and the 20 most important sites selected have better explicable *** major contributions derived from this work are of significant aid in process simulation model with high accuracy and process optimization based on the selected most important sites to maintain high quality and stable production for corn to sugar processes.
BACKGROUND The peritumoral region possesses attributes that promote cancer growth and ***,the potential prognostic biomarkers in this region remain relatively underexplored in *** To investigate the prognostic value a...
详细信息
BACKGROUND The peritumoral region possesses attributes that promote cancer growth and ***,the potential prognostic biomarkers in this region remain relatively underexplored in *** To investigate the prognostic value and importance of peritumoral radiomics in locally advanced rectal cancer(LARC).METHODS This retrospective study included 409 patients with biopsy-confirmed LARC treated with neoadjuvant chemoradiotherapy and *** were divided into training(n=273)and validation(n=136)*** on intratumoral and peritumoral radiomic features extracted from pretreatment axial high-resolution small-field-of-view T2-weighted images,multivariate Cox models for progression-free survival(PFS)prediction were developed with or without clinicoradiological features and evaluated with Harrell’s concordance index(C-index),calibration curve,and decision curve *** stratification,Kaplan-Meier analysis,and permutation feature importance analysis were *** The comprehensive integrated clinical-radiological-omics model(ModelICRO)integrating seven peritumoral,three intratumoral,and four clinicoradiological features achieved the highest C-indices(0.836 and 0.801 in the training and validation sets,respectively).This model showed robust calibration and better clinical net benefits,effectively distinguished high-risk from low-risk patients(PFS:97.2%vs 67.6%and 95.4%vs 64.8%in the training and validation sets,respectively;both P<0.001).Three most influential predictors in the comprehensive ModelICRO were,in order,a peritumoral,an intratumoral,and a clinicoradiological ***,the peritumoral model outperformed the intratumoral model(C-index:0.754 vs 0.670;P=0.015);peritumoral features significantly enhanced the performance of models based on clinicoradiological or intratumoral features or their *** Peritumoral radiomics holds greater prognostic value than intratumoral radiomics for predicting PFS in L
In this study some soil phosphorous sorption parameters(PSPs)by using different machine learning models(Cubist(Cu),random forest(RF),support vector machines(SVM)and Gaussian process regression(GPR))were *** results sh...
详细信息
In this study some soil phosphorous sorption parameters(PSPs)by using different machine learning models(Cubist(Cu),random forest(RF),support vector machines(SVM)and Gaussian process regression(GPR))were *** results showed that using the topographic attributes as the sole auxiliary variables was not adequate for predicting the ***,remote sensing data and its combination with soil properties were reliably used to predict PSPs(R^(2)=0.41 for MBC by RF model,R^(2)=0.49 for PBC by Cu model,R^(2)=0.37 for SPR by Cu model,and R^(2)=0.38 for SBC by RF model).The lowest RMSE values were obtained for MBC by RF model,PBC by SVM model,SPR by Cubist model and SBC by RF *** results also showed that remote sensing data as the easily available datasets could reliably predict PSPs in the given study *** outcomes of variable importance analysis revealed that among the soil properties cation exchange capacity(CEC)and clay content,and among the remote sensing indices B5/B7,Midindex,Coloration index,Saturation index,and OSAVI were the most imperative factors for predicting *** studies are recommended to use other proximally sensed data to improve PSPs prediction to precise decision-making throughout the landscape.
暂无评论