Charles F Shaefer.Implications of the ADA/EASD consensus algorithm for treatment of type 2 diabetes mellitus for primary care practitioners:four pivotal points. Excerpta Medica Inc . 2008Charles F Shaefer.Implications of the ADA/EASD consensus algorithm for treatment of type 2 diabetes mellitus for ...
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(mostly through FRET-induced excitation). Based on these results and numerical simulations using a simple but competent algorithm, we developed guidelines for choosing appropriate experimental conditions for reliable FRET measurements, as well as for interpreting the results of existing experiments using ...
The algorithm (Fig. 2) takes into account the characteristics of the individual interventions, their synergies, and expense. The goal is to achieve and maintain glycemic levels as close to the nondiabetic range as possible and to change interventions at as rapid a pace as titration of ...
[14] Rubino F, Nathan DM, Eckel RH, et al. Metabolic Surgery in the Treatment Algorithm for Type 2 Diabetes: A Joint Statement by International Diabetes Organizations[J]. Diabetes Care, 2016, 39(6):861-877. [15] Cummings DE, Cohen RV. Beyond BMI: the need for new guidelines governing...
Nonlaboratory-based risk assessment algorithm for undiagnosed Type 2 diabetes developed on a nation-wide diabetes survey. Diabetes Care. 2013;36:3944-52. https:// doi.org/10.2337/dc13-0593 Wang H, Liu T, Qiu Q, Ding P, He YH, Chen WQ. A Simple risk score...
The Adaboost algorithm selects only critical features and generates an extremely efficient classifier. The combination of two feature extraction decreases the training time and improves the classification accuracy. The accuracy of the proposed method is quite high: over 98.4% for classification and more...
A multi-class classifier-based AdaBoost algorithm for the efficient classification of multi-class data is proposed in this paper. The traditional AdaBoost algorithm is basically a binary classifier and it has limitations when applied to multi-class data problems even though its multi-class versions ...