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  2. Matching Content Categories
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  4. Monthly Traffic Estimate
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  6. Keywords
  7. Topics
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We are analyzing https://link.springer.com/article/10.1007/s11547-019-01100-1.

Title:
Invasive ductal breast cancer: preoperative predict Ki-67 index based on radiomics of ADC maps | La radiologia medica
Description:
Purpose The purpose of this study is to develop a radiomics model for predicting the Ki-67 proliferation index in patients with invasive ductal breast cancer through magnetic resonance imaging (MRI) preoperatively. Materials and methods A total of 128 patients who were clinicopathologically diagnosed with invasive ductal breast cancer were recruited. This cohort included 32 negative Ki67 expression (Ki67 proliferation indexโ€‰<โ€‰14%) and 96 cases with positive Ki67 expression (Ki67 proliferation indexโ€‰โ‰ฅโ€‰14%). All patients had undergone diffusion-weighted imaging (DWI) MRI before surgery on a 3.0T MRI scanner. Radiomics features were extracted from apparent diffusion coefficient (ADC) maps which were obtained by DWI-MRI from patients with invasive ductal breast cancer. 80% of the patients were divided into training set to build radiomics model, and the rest into test set to evaluate its performance. The least absolute shrinkage and selection operator (LASSO) was used to select radiomics features, and then, the logistic regression (LR) model was established using fivefold cross-validation to predict the Ki-67 index. The performance was evaluated by receiver-operating characteristic (ROC) analysis, accuracy, sensitivity and specificity. Results Quantitative imaging features (nโ€‰=โ€‰1029) were extracted from ADC maps, and 11 features were selected to construct the LR model. Good identification ability was exhibited by the ADC-based radiomics model, with areas under the ROC (AUC) values of 0.75โ€‰ยฑโ€‰0.08, accuracy of 0.71 in training set and 0.72, 0.70 in test set. Conclusions The ADC-based radiomics model is a feasible predictor for the Ki-67 index in patients with invasive ductal breast cancer. Therefore, we proposed that three-dimensional imaging features from ADC maps could be used as candidate biomarker for preoperative prediction the Ki-67 index noninvasively.
Website Age:
28 years and 1 months (reg. 1997-05-29).

Matching Content Categories {๐Ÿ“š}

  • Education
  • Health & Fitness
  • Books & Literature

Content Management System {๐Ÿ“}

What CMS is link.springer.com built with?

Custom-built

No common CMS systems were detected on Link.springer.com, and no known web development framework was identified.

Traffic Estimate {๐Ÿ“ˆ}

What is the average monthly size of link.springer.com audience?

๐ŸŒ  Phenomenal Traffic: 5M - 10M visitors per month


Based on our best estimate, this website will receive around 5,000,019 visitors per month in the current month.
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How Does Link.springer.com Make Money? {๐Ÿ’ธ}

We don't see any clear sign of profit-making.

Not all websites focus on profit; some are designed to educate, connect people, or share useful tools. People create websites for numerous reasons. And this could be one such example. Link.springer.com could be getting rich in stealth mode, or the way it's monetizing isn't detectable.

Keywords {๐Ÿ”}

article, cancer, google, scholar, breast, radiomics, imaging, zhang, preoperative, index, mri, features, invasive, wang, patients, cas, radiol, ductal, model, diffusionweighted, liu, prediction, clin, analysis, adc, maps, access, med, author, dalian, privacy, cookies, content, information, research, radiology, proliferation, diffusion, status, res, liang, chen, sansone, pubmed, medical, china, data, journal, publish, search,

Topics {โœ’๏ธ}

month download article/chapter invasive ductal carcinoma mri-based radiomics classifier ct-based radiomics signature adc-based radiomics model jingjing cui undergone diffusion-weighted imaging parallel diffusion-weighted imaging shaowu wang dynamic contrast-enhanced mri early breast cancer large-scale radiomic profiling dce-mri radiomics features invasive breast carcinoma diffusion-weighted mr imaging dw-mri quantitative parameters machine learning-based analysis magnetic resonance imaging human breast cancer evaluating breast cancer multi-sequence mr images breast dce-mri imaging markers national research committee author correspondence diffusion-weighted imaging diffusion-weighted mri recurrent glioblastoma identifies van stiphout rg build radiomics model full article pdf privacy choices/manage cookies multi-sequence mri bladder cancer tumors apparent diffusion coefficient radiology reading room check access instant access quantitative radiomics approach dimensional imaging features positive ki67 expression breast lesion classification select radiomics features evaluating breast lesions stage i-ii ki-67 index noninvasively ki-67 expression levels 0t mri scanner related subjects decoding tumour phenotype

Schema {๐Ÿ—บ๏ธ}

WebPage:
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         headline:Invasive ductal breast cancer: preoperative predict Ki-67 index based on radiomics of ADC maps
         description:The purpose of this study is to develop a radiomics model for predicting the Ki-67 proliferation index in patients with invasive ductal breast cancer through magnetic resonance imaging (MRI) preoperatively. A total of 128 patients who were clinicopathologically diagnosed with invasive ductal breast cancer were recruited. This cohort included 32 negative Ki67 expression (Ki67 proliferation indexโ€‰&lt;โ€‰14%) and 96 cases with positive Ki67 expression (Ki67 proliferation indexโ€‰โ‰ฅโ€‰14%). All patients had undergone diffusion-weighted imaging (DWI) MRI before surgery on a 3.0T MRI scanner. Radiomics features were extracted from apparent diffusion coefficient (ADC) maps which were obtained by DWI-MRI from patients with invasive ductal breast cancer. 80% of the patients were divided into training set to build radiomics model, and the rest into test set to evaluate its performance. The least absolute shrinkage and selection operator (LASSO) was used to select radiomics features, and then, the logistic regression (LR) model was established using fivefold cross-validation to predict the Ki-67 index. The performance was evaluated by receiver-operating characteristic (ROC) analysis, accuracy, sensitivity and specificity. Quantitative imaging features (nโ€‰=โ€‰1029) were extracted from ADC maps, and 11 features were selected to construct the LR model. Good identification ability was exhibited by the ADC-based radiomics model, with areas under the ROC (AUC) values of 0.75โ€‰ยฑโ€‰0.08, accuracy of 0.71 in training set and 0.72, 0.70 in test set. The ADC-based radiomics model is a feasible predictor for the Ki-67 index in patients with invasive ductal breast cancer. Therefore, we proposed that three-dimensional imaging features from ADC maps could be used as candidate biomarker for preoperative prediction the Ki-67 index noninvasively.
         datePublished:2019-11-06T00:00:00Z
         dateModified:2019-11-06T00:00:00Z
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      headline:Invasive ductal breast cancer: preoperative predict Ki-67 index based on radiomics of ADC maps
      description:The purpose of this study is to develop a radiomics model for predicting the Ki-67 proliferation index in patients with invasive ductal breast cancer through magnetic resonance imaging (MRI) preoperatively. A total of 128 patients who were clinicopathologically diagnosed with invasive ductal breast cancer were recruited. This cohort included 32 negative Ki67 expression (Ki67 proliferation indexโ€‰&lt;โ€‰14%) and 96 cases with positive Ki67 expression (Ki67 proliferation indexโ€‰โ‰ฅโ€‰14%). All patients had undergone diffusion-weighted imaging (DWI) MRI before surgery on a 3.0T MRI scanner. Radiomics features were extracted from apparent diffusion coefficient (ADC) maps which were obtained by DWI-MRI from patients with invasive ductal breast cancer. 80% of the patients were divided into training set to build radiomics model, and the rest into test set to evaluate its performance. The least absolute shrinkage and selection operator (LASSO) was used to select radiomics features, and then, the logistic regression (LR) model was established using fivefold cross-validation to predict the Ki-67 index. The performance was evaluated by receiver-operating characteristic (ROC) analysis, accuracy, sensitivity and specificity. Quantitative imaging features (nโ€‰=โ€‰1029) were extracted from ADC maps, and 11 features were selected to construct the LR model. Good identification ability was exhibited by the ADC-based radiomics model, with areas under the ROC (AUC) values of 0.75โ€‰ยฑโ€‰0.08, accuracy of 0.71 in training set and 0.72, 0.70 in test set. The ADC-based radiomics model is a feasible predictor for the Ki-67 index in patients with invasive ductal breast cancer. Therefore, we proposed that three-dimensional imaging features from ADC maps could be used as candidate biomarker for preoperative prediction the Ki-67 index noninvasively.
      datePublished:2019-11-06T00:00:00Z
      dateModified:2019-11-06T00:00:00Z
      pageStart:109
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      sameAs:https://doi.org/10.1007/s11547-019-01100-1
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         Radiomics
         Invasive ductal breast cancer
         Ki-67
         MRI
         Imaging / Radiology
         Diagnostic Radiology
         Interventional Radiology
         Neuroradiology
         Ultrasound
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               type:PostalAddress
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               name:Department of Radiology, The Second Hospital, Dalian Medical University, Dalian, China
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