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learning algorithm » learning algorithms (Expand Search)
data algorithm » data algorithms (Expand Search), update algorithm (Expand Search), atlas algorithm (Expand Search)
data learning » meta learning (Expand Search), deep learning (Expand Search), a learning (Expand Search)
develop based » developed based (Expand Search), develop masld (Expand Search), development based (Expand Search)
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Image 2_A machine learning model based on emergency clinical data predicting 3-day in-hospital mortality for stroke and trauma patients.tif
Published 2025“…LASSO regression was used for feature selection, and the predictive performance of logistic regression was compared with six machine learning algorithms. A 70:30 ratio was applied for cross-validation, and confidence intervals were calculated using the bootstrap method. …”
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122
Image 4_A machine learning model based on emergency clinical data predicting 3-day in-hospital mortality for stroke and trauma patients.tif
Published 2025“…LASSO regression was used for feature selection, and the predictive performance of logistic regression was compared with six machine learning algorithms. A 70:30 ratio was applied for cross-validation, and confidence intervals were calculated using the bootstrap method. …”
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123
Image 3_A machine learning model based on emergency clinical data predicting 3-day in-hospital mortality for stroke and trauma patients.tif
Published 2025“…LASSO regression was used for feature selection, and the predictive performance of logistic regression was compared with six machine learning algorithms. A 70:30 ratio was applied for cross-validation, and confidence intervals were calculated using the bootstrap method. …”
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124
Table 1_A machine learning model based on emergency clinical data predicting 3-day in-hospital mortality for stroke and trauma patients.docx
Published 2025“…LASSO regression was used for feature selection, and the predictive performance of logistic regression was compared with six machine learning algorithms. A 70:30 ratio was applied for cross-validation, and confidence intervals were calculated using the bootstrap method. …”
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125
Supplementary file 1_Machine learning-based algorithms for the prediction of 90-day survival in patients with liver failure receiving artificial liver therapy.docx
Published 2025“…Background<p>Liver failure is associated with high short-term mortality, and the predictive value of clinical factors for patients undergoing artificial liver therapy is uncertain. We aim to develop prognostic models using several machine learning algorithms to predict 90-day survival in patients with liver failure undergoing artificial liver therapy.…”
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Table 1_UrbanAgri: a transfer learning-based plant stress identification framework for sustainable smart urban growth.xlsx
Published 2025“…Based on the capabilities of transfer learning, the model makes use of optimal feature extraction with small datasets, resolving the issue of data scarcity in cities. …”
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128
Comparison of results of machine learning prediction models based on imaging and clinical practice.
Published 2025Subjects: -
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Comparison of Ten-fold Cross validation metrics for various machine learning models.
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Image 2_Identifying network state-based Parkinson’s disease subtypes using clustering and support vector machine models.pdf
Published 2025“…</p>Methods<p>Here, we employ K-means and hierarchical clustering algorithms on data from the Parkinson’s Progression Markers Initiative (PPMI) to identify network-specific patterns that describe PD subtypes using the optimal number of brain features. …”
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135
Table 1_Identifying network state-based Parkinson’s disease subtypes using clustering and support vector machine models.xlsx
Published 2025“…</p>Methods<p>Here, we employ K-means and hierarchical clustering algorithms on data from the Parkinson’s Progression Markers Initiative (PPMI) to identify network-specific patterns that describe PD subtypes using the optimal number of brain features. …”
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136
Table 6_Identifying network state-based Parkinson’s disease subtypes using clustering and support vector machine models.xlsx
Published 2025“…</p>Methods<p>Here, we employ K-means and hierarchical clustering algorithms on data from the Parkinson’s Progression Markers Initiative (PPMI) to identify network-specific patterns that describe PD subtypes using the optimal number of brain features. …”
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137
Table 2_Identifying network state-based Parkinson’s disease subtypes using clustering and support vector machine models.xlsx
Published 2025“…</p>Methods<p>Here, we employ K-means and hierarchical clustering algorithms on data from the Parkinson’s Progression Markers Initiative (PPMI) to identify network-specific patterns that describe PD subtypes using the optimal number of brain features. …”
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138
Table 4_Identifying network state-based Parkinson’s disease subtypes using clustering and support vector machine models.xlsx
Published 2025“…</p>Methods<p>Here, we employ K-means and hierarchical clustering algorithms on data from the Parkinson’s Progression Markers Initiative (PPMI) to identify network-specific patterns that describe PD subtypes using the optimal number of brain features. …”
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139
Image 3_Identifying network state-based Parkinson’s disease subtypes using clustering and support vector machine models.pdf
Published 2025“…</p>Methods<p>Here, we employ K-means and hierarchical clustering algorithms on data from the Parkinson’s Progression Markers Initiative (PPMI) to identify network-specific patterns that describe PD subtypes using the optimal number of brain features. …”
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140
Table 8_Identifying network state-based Parkinson’s disease subtypes using clustering and support vector machine models.xlsx
Published 2025“…</p>Methods<p>Here, we employ K-means and hierarchical clustering algorithms on data from the Parkinson’s Progression Markers Initiative (PPMI) to identify network-specific patterns that describe PD subtypes using the optimal number of brain features. …”