487 results on '"Partridge, Savannah C"'
Search Results
2. Fat-signal suppression in breast diffusion-weighted imaging: the Good, the Bad, and the Ugly
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Le Bihan, Denis, Iima, Mami, and Partridge, Savannah C.
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- 2024
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3. Non-contrast Breast MR Imaging
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Kim, Jin You and Partridge, Savannah C.
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- 2024
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4. Multimodal prediction of neoadjuvant treatment outcome by serial FDG PET and MRI in women with locally advanced breast cancer
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Kazerouni, Anum S., Peterson, Lanell M., Jenkins, Isaac, Novakova-Jiresova, Alena, Linden, Hannah M., Gralow, Julie R., Hockenbery, David M., Mankoff, David A., Porter, Peggy L., Partridge, Savannah C., and Specht, Jennifer M.
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- 2023
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5. Impact of Alternate b-Value Combinations and Metrics on the Predictive Performance and Repeatability of Diffusion-Weighted MRI in Breast Cancer Treatment: Results from the ECOG-ACRIN A6698 Trial
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Partridge, Savannah C, Steingrimsson, Jon, Newitt, David C, Gibbs, Jessica E, Marques, Helga S, Bolan, Patrick J, Boss, Michael A, Chenevert, Thomas L, Rosen, Mark A, and Hylton, Nola M
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Biomedical and Clinical Sciences ,Oncology and Carcinogenesis ,Cancer ,Clinical Research ,Biomedical Imaging ,Breast Cancer ,Evaluation of treatments and therapeutic interventions ,6.1 Pharmaceuticals ,Benchmarking ,Breast Neoplasms ,Diffusion Magnetic Resonance Imaging ,Female ,Humans ,Neoadjuvant Therapy ,ROC Curve ,Tumor Microenvironment ,breast cancer ,diffusion-weighted MRI ,apparent diffusion coefficient ,treatment response ,repeatability ,reproducibility ,quantitative imaging biomarker alliance - Abstract
In diffusion-weighted MRI (DW-MRI), choice of b-value influences apparent diffusion coefficient (ADC) values by probing different aspects of the tissue microenvironment. As a secondary analysis of the multicenter ECOG-ACRIN A6698 trial, the purpose of this study was to investigate the impact of alternate b-value combinations on the performance and repeatability of tumor ADC as a predictive marker of breast cancer treatment response. The final analysis included 210 women who underwent standardized 4-b-value DW-MRI (b = 0/100/600/800 s/mm2) at multiple timepoints during neoadjuvant chemotherapy treatment and a subset (n = 71) who underwent test−retest scans. Centralized tumor ADC and perfusion fraction (fp) measures were performed using variable b-value combinations. Prediction of pathologic complete response (pCR) based on the mid-treatment/12-week percent change in each metric was estimated by area under the receiver operating characteristic curve (AUC). Repeatability was estimated by within-subject coefficient of variation (wCV). Results show that two-b-value ADC calculations provided non-inferior predictive value to four-b-value ADC calculations overall (AUCs = 0.60−0.61 versus AUC = 0.60) and for HR+/HER2− cancers where ADC was most predictive (AUCs = 0.75−0.78 versus AUC = 0.76), p < 0.05. Using two b-values (0/600 or 0/800 s/mm2) did not reduce ADC repeatability over the four-b-value calculation (wCVs = 4.9−5.2% versus 5.4%). The alternate metrics ADCfast (b ≤ 100 s/mm2), ADCslow (b ≥ 100 s/mm2), and fp did not improve predictive performance (AUCs = 0.54−0.60, p = 0.08−0.81), and ADCfast and fp demonstrated the lowest repeatability (wCVs = 6.71% and 12.4%, respectively). In conclusion, breast tumor ADC calculated using a simple two-b-value approach can provide comparable predictive value and repeatability to full four-b-value measurements as a marker of treatment response.
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- 2022
6. Diffusion-Weighted MRI for Predicting Pathologic Complete Response in Neoadjuvant Immunotherapy
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Li, Wen, Le, Nu N, Onishi, Natsuko, Newitt, David C, Wilmes, Lisa J, Gibbs, Jessica E, Carmona-Bozo, Julia, Liang, Jiachao, Partridge, Savannah C, Price, Elissa R, Joe, Bonnie N, Kornak, John, Magbanua, Mark Jesus M, Nanda, Rita, LeStage, Barbara, Esserman, Laura J, Group, I-SPY Imaging Working, Network, I-SPY Investigator, Veer, Laura J van’t, and Hylton, Nola M
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Cancer ,Breast Cancer ,Clinical Research ,Biomedical Imaging ,diffusion-weighted MRI ,breast cancer ,immunotherapy ,pathologic complete response ,neoadjuvant therapy ,Oncology and Carcinogenesis - Abstract
This study tested the hypothesis that a change in the apparent diffusion coefficient (ADC) measured in diffusion-weighted MRI (DWI) is an independent imaging marker, and ADC performs better than functional tumor volume (FTV) for assessing treatment response in patients with locally advanced breast cancer receiving neoadjuvant immunotherapy. A total of 249 patients were randomized to standard neoadjuvant chemotherapy with pembrolizumab (pembro) or without pembrolizumab (control). DCE-MRI and DWI, performed prior to and 3 weeks after the start of treatment, were analyzed. Percent changes of tumor ADC metrics (mean, 5th to 95th percentiles of ADC histogram) and FTV were evaluated for the prediction of pathologic complete response (pCR) using a logistic regression model. The area under the ROC curve (AUC) estimated for the percent change in mean ADC was higher in the pembro cohort (0.73, 95% confidence interval [CI]: 0.52 to 0.93) than in the control cohort (0.63, 95% CI: 0.43 to 0.83). In the control cohort, the percent change of the 95th percentile ADC achieved the highest AUC, 0.69 (95% CI: 0.52 to 0.85). In the pembro cohort, the percent change of the 25th percentile ADC achieved the highest AUC, 0.75 (95% CI: 0.55 to 0.95). AUCs estimated for percent change of FTV were 0.61 (95% CI: 0.39 to 0.83) and 0.66 (95% CI: 0.47 to 0.85) for the pembro and control cohorts, respectively. Tumor ADC may perform better than FTV to predict pCR at an early treatment time-point during neoadjuvant immunotherapy.
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- 2022
7. Effect of Inter-Reader Variability on Diffusion-Weighted MRI Apparent Diffusion Coefficient Measurements and Prediction of Pathologic Complete Response for Breast Cancer
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Le, Nu N, Li, Wen, Onishi, Natsuko, Newitt, David C, Gibbs, Jessica E, Wilmes, Lisa J, Kornak, John, Partridge, Savannah C, LeStage, Barbara, Price, Elissa R, Joe, Bonnie N, Esserman, Laura J, and Hylton, Nola M
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Biomedical and Clinical Sciences ,Oncology and Carcinogenesis ,Clinical Trials and Supportive Activities ,Clinical Research ,Breast Cancer ,Biomedical Imaging ,Cancer ,Adult ,Breast ,Breast Neoplasms ,Diffusion Magnetic Resonance Imaging ,Female ,Humans ,Middle Aged ,Observer Variation ,Reproducibility of Results ,reader variability ,diffusion-weighted imaging ,breast cancer ,treatment response ,neoadjuvant therapy - Abstract
This study evaluated the inter-reader agreement of tumor apparent diffusion coefficient (ADC) measurements performed on breast diffusion-weighted imaging (DWI) for assessing treatment response in a multi-center clinical trial of neoadjuvant chemotherapy (NAC) for breast cancer. DWIs from 103 breast cancer patients (mean age: 46 ± 11 years) acquired at baseline and after 3 weeks of treatment were evaluated independently by two readers. Three types of tumor regions of interests (ROIs) were delineated: multiple-slice restricted, single-slice restricted and single-slice tumor ROIs. Compared to tumor ROIs, restricted ROIs were limited to low ADC areas of enhancing tumor only. We found excellent agreement (intraclass correlation coefficient [ICC] ranged from 0.94 to 0.98) for mean ADC. Higher ICCs were observed in multiple-slice restricted ROIs (range: 0.97 to 0.98) than in other two ROI types (both in the range of 0.94 to 0.98). Among the three ROI types, the highest area under the receiver operating characteristic curves (AUCs) were observed for mean ADC of multiple-slice restricted ROIs (0.65, 95% confidence interval [CI]: 0.52-0.79 and 0.67, 95% CI: 0.53-0.81 for Reader 1 and Reader 2, respectively). In conclusion, mean ADC values of multiple-slice restricted ROI showed excellent agreement and similar predictive performance for pathologic complete response between the two readers.
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- 2022
8. Breast MRI during Neoadjuvant Chemotherapy: Lack of Background Parenchymal Enhancement Suppression and Inferior Treatment Response.
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Onishi, Natsuko, Li, Wen, Newitt, David C, Harnish, Roy J, Strand, Fredrik, Nguyen, Alex Anh-Tu, Arasu, Vignesh Amal, Gibbs, Jessica, Jones, Ella F, Wilmes, Lisa J, Kornak, John, Joe, Bonnie N, Price, Elissa R, Ojeda-Fournier, Haydee, Eghtedari, Mohammad, Zamora, Kathryn W, Woodard, Stefanie, Umphrey, Heidi R, Nelson, Michael T, Church, An L, Bolan, Patrick J, Kuritza, Theresa, Ward, Kathleen, Morley, Kevin, Wolverton, Dulcy, Fountain, Kelly, Lopez Paniagua, Dan, Hardesty, Lara, Brandt, Kathleen R, McDonald, Elizabeth S, Rosen, Mark, Kontos, Despina, Abe, Hiroyuki, Sheth, Deepa, Crane, Erin, Dillis, Charlotte, Sheth, Pulin, Hovanessian-Larsen, Linda, Bang, Dae Hee, Porter, Bruce, Oh, Karen Y, Jafarian, Neda, Tudorica, Luminita A, Niell, Bethany, Drukteinis, Jennifer, Newell, Mary S, Giurescu, Marina E, Berman, Elise, Lehman, Constance D, Partridge, Savannah C, Fitzpatrick, Kimberly A, Borders, Marisa H, Yang, Wei Tse, Dogan, Basak, Goudreau, Sally Hayward, Chenevert, Thomas, Yau, Christina, DeMichele, Angela, Berry, Donald A, Esserman, Laura J, and Hylton, Nola M
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Breast ,Humans ,Breast Neoplasms ,Contrast Media ,Magnetic Resonance Imaging ,Image Enhancement ,Treatment Outcome ,Chemotherapy ,Adjuvant ,Neoadjuvant Therapy ,Retrospective Studies ,Cohort Studies ,Adult ,Aged ,Middle Aged ,Female ,Young Adult ,Cancer ,Breast Cancer ,Biomedical Imaging ,Aging ,Evaluation of treatments and therapeutic interventions ,6.1 Pharmaceuticals ,Medical and Health Sciences ,Nuclear Medicine & Medical Imaging - Abstract
Background Suppression of background parenchymal enhancement (BPE) is commonly observed after neoadjuvant chemotherapy (NAC) at contrast-enhanced breast MRI. It was hypothesized that nonsuppressed BPE may be associated with inferior response to NAC. Purpose To investigate the relationship between lack of BPE suppression and pathologic response. Materials and Methods A retrospective review was performed for women with menopausal status data who were treated for breast cancer by one of 10 drug arms (standard NAC with or without experimental agents) between May 2010 and November 2016 in the Investigation of Serial Studies to Predict Your Therapeutic Response with Imaging and Molecular Analysis 2, or I-SPY 2 TRIAL (NCT01042379). Patients underwent MRI at four points: before treatment (T0), early treatment (T1), interregimen (T2), and before surgery (T3). BPE was quantitatively measured by using automated fibroglandular tissue segmentation. To test the hypothesis effectively, a subset of examinations with BPE with high-quality segmentation was selected. BPE change from T0 was defined as suppressed or nonsuppressed for each point. The Fisher exact test and the Z tests of proportions with Yates continuity correction were used to examine the relationship between BPE suppression and pathologic complete response (pCR) in hormone receptor (HR)-positive and HR-negative cohorts. Results A total of 3528 MRI scans from 882 patients (mean age, 48 years ± 10 [standard deviation]) were reviewed and the subset of patients with high-quality BPE segmentation was determined (T1, 433 patients; T2, 396 patients; T3, 380 patients). In the HR-positive cohort, an association between lack of BPE suppression and lower pCR rate was detected at T2 (nonsuppressed vs suppressed, 11.8% [six of 51] vs 28.9% [50 of 173]; difference, 17.1% [95% CI: 4.7, 29.5]; P = .02) and T3 (nonsuppressed vs suppressed, 5.3% [two of 38] vs 27.4% [48 of 175]; difference, 22.2% [95% CI: 10.9, 33.5]; P = .003). In the HR-negative cohort, patients with nonsuppressed BPE had lower estimated pCR rate at all points, but the P values for the association were all greater than .05. Conclusions In hormone receptor-positive breast cancer, lack of background parenchymal enhancement suppression may indicate inferior treatment response. © RSNA, 2021 Online supplemental material is available for this article. See also the editorial by Philpotts in this issue.
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- 2021
9. Factors Affecting Image Quality and Lesion Evaluability in Breast Diffusion-weighted MRI: Observations from the ECOG-ACRIN Cancer Research Group Multisite Trial (A6702)
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Whisenant, Jennifer G, Romanoff, Justin, Rahbar, Habib, Kitsch, Averi E, Harvey, Sara M, Moy, Linda, DeMartini, Wendy B, Dogan, Basak E, Yang, Wei T, Wang, Lilian C, Joe, Bonnie N, Wilmes, Lisa J, Hylton, Nola M, Oh, Karen Y, Tudorica, Luminita A, Neal, Colleen H, Malyarenko, Dariya I, McDonald, Elizabeth S, Comstock, Christopher E, Yankeelov, Thomas E, Chenevert, Thomas L, and Partridge, Savannah C
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Biomedical and Clinical Sciences ,Oncology and Carcinogenesis ,Clinical Research ,Clinical Trials and Supportive Activities ,Breast Cancer ,Cancer ,Biomedical Imaging ,Detection ,screening and diagnosis ,4.2 Evaluation of markers and technologies ,multicenter trial ,breast magnetic resonance imaging ,apparent diffusion coefficient ,artifacts ,diagnostic performance - Abstract
ObjectiveThe A6702 multisite trial confirmed that apparent diffusion coefficient (ADC) measures can improve breast MRI accuracy and reduce unnecessary biopsies, but also found that technical issues rendered many lesions non-evaluable on diffusion-weighted imaging (DWI). This secondary analysis investigated factors affecting lesion evaluability and impact on diagnostic performance.MethodsThe A6702 protocol was IRB-approved at 10 institutions; participants provided informed consent. In total, 103 women with 142 MRI-detected breast lesions (BI-RADS assessment category 3, 4, or 5) completed the study. DWI was acquired at 1.5T and 3T using a four b-value, echo-planar imaging sequence. Scans were reviewed for multiple quality factors (artifacts, signal-to-noise, misregistration, and fat suppression); lesions were considered non-evaluable if there was low confidence in ADC measurement. Associations of lesion evaluability with imaging and lesion characteristics were determined. Areas under the receiver operating characteristic curves (AUCs) were compared using bootstrapping.ResultsThirty percent (42/142) of lesions were non-evaluable on DWI; 23% (32/142) with image quality issues, 7% (10/142) with conspicuity and/or localization issues. Misregistration was the only factor associated with non-evaluability (P = 0.001). Smaller (≤10 mm) lesions were more commonly non-evaluable than larger lesions (p
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- 2021
10. Mean Apparent Diffusion Coefficient Is a Sufficient Conventional Diffusion-weighted MRI Metric to Improve Breast MRI Diagnostic Performance: Results from the ECOG-ACRIN Cancer Research Group A6702 Diffusion Imaging Trial
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McDonald, Elizabeth S, Romanoff, Justin, Rahbar, Habib, Kitsch, Averi E, Harvey, Sara M, Whisenant, Jennifer G, Yankeelov, Thomas E, Moy, Linda, DeMartini, Wendy B, Dogan, Basak E, Yang, Wei T, Wang, Lilian C, Joe, Bonnie N, Wilmes, Lisa J, Hylton, Nola M, Oh, Karen Y, Tudorica, Luminita A, Neal, Colleen H, Malyarenko, Dariya I, Comstock, Christopher E, Schnall, Mitchell D, Chenevert, Thomas L, and Partridge, Savannah C
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Biomedical and Clinical Sciences ,Oncology and Carcinogenesis ,Clinical Trials and Supportive Activities ,Clinical Research ,Breast Cancer ,Prevention ,Cancer ,Biomedical Imaging ,Adult ,Aged ,Breast ,Breast Neoplasms ,Diagnosis ,Differential ,Diffusion Magnetic Resonance Imaging ,Female ,Humans ,Middle Aged ,Prospective Studies ,Reproducibility of Results ,Sensitivity and Specificity ,Societies ,Medical ,Young Adult ,Medical and Health Sciences ,Nuclear Medicine & Medical Imaging ,Clinical sciences - Abstract
Background The Eastern Cooperative Oncology Group and American College of Radiology Imaging Network Cancer Research Group A6702 multicenter trial helped confirm the potential of diffusion-weighted MRI for improving differential diagnosis of suspicious breast abnormalities and reducing unnecessary biopsies. A prespecified secondary objective was to explore the relative value of different approaches for quantitative assessment of lesions at diffusion-weighted MRI. Purpose To determine whether alternate calculations of apparent diffusion coefficient (ADC) can help further improve diagnostic performance versus mean ADC values alone for analysis of suspicious breast lesions at MRI. Materials and Methods This prospective trial (ClinicalTrials.gov identifier: NCT02022579) enrolled consecutive women (from March 2014 to April 2015) with a Breast Imaging Reporting and Data System category of 3, 4, or 5 at breast MRI. All study participants underwent standardized diffusion-weighted MRI (b = 0, 100, 600, and 800 sec/mm2). Centralized ADC measures were performed, including manually drawn whole-lesion and hotspot regions of interest, histogram metrics, normalized ADC, and variable b-value combinations. Diagnostic performance was estimated by using the area under the receiver operating characteristic curve (AUC). Reduction in biopsy rate (maintaining 100% sensitivity) was estimated according to thresholds for each ADC metric. Results Among 107 enrolled women, 81 lesions with outcomes (28 malignant and 53 benign) in 67 women (median age, 49 years; interquartile range, 41-60 years) were analyzed. Among ADC metrics tested, none improved diagnostic performance versus standard mean ADC (AUC, 0.59-0.79 vs AUC, 0.75; P = .02-.84), and maximum ADC had worse performance (AUC, 0.52; P < .001). The 25th-percentile ADC metric provided the best performance (AUC, 0.79; 95% CI: 0.70, 0.88), and a threshold using median ADC provided the greatest reduction in biopsy rate of 23.9% (95% CI: 14.8, 32.9; 16 of 67 BI-RADS category 4 and 5 lesions). Nonzero minimum b value (100, 600, and 800 sec/mm2) did not improve the AUC (0.74; P = .28), and several combinations of two b values (0 and 600, 100 and 600, 0 and 800, and 100 and 800 sec/mm2; AUC, 0.73-0.76) provided results similar to those seen with calculations of four b values (AUC, 0.75; P = .17-.87). Conclusion Mean apparent diffusion coefficient calculated with a two-b-value acquisition is a simple and sufficient diffusion-weighted MRI metric to augment diagnostic performance of breast MRI compared with more complex approaches to apparent diffusion coefficient measurement. © RSNA, 2020 Online supplemental material is available for this article.
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- 2021
11. Predicting breast cancer response to neoadjuvant treatment using multi-feature MRI: results from the I-SPY 2 TRIAL.
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Li, Wen, Newitt, David C, Gibbs, Jessica, Wilmes, Lisa J, Jones, Ella F, Arasu, Vignesh A, Strand, Fredrik, Onishi, Natsuko, Nguyen, Alex Anh-Tu, Kornak, John, Joe, Bonnie N, Price, Elissa R, Ojeda-Fournier, Haydee, Eghtedari, Mohammad, Zamora, Kathryn W, Woodard, Stefanie A, Umphrey, Heidi, Bernreuter, Wanda, Nelson, Michael, Church, An Ly, Bolan, Patrick, Kuritza, Theresa, Ward, Kathleen, Morley, Kevin, Wolverton, Dulcy, Fountain, Kelly, Lopez-Paniagua, Dan, Hardesty, Lara, Brandt, Kathy, McDonald, Elizabeth S, Rosen, Mark, Kontos, Despina, Abe, Hiroyuki, Sheth, Deepa, Crane, Erin P, Dillis, Charlotte, Sheth, Pulin, Hovanessian-Larsen, Linda, Bang, Dae Hee, Porter, Bruce, Oh, Karen Y, Jafarian, Neda, Tudorica, Alina, Niell, Bethany L, Drukteinis, Jennifer, Newell, Mary S, Cohen, Michael A, Giurescu, Marina, Berman, Elise, Lehman, Constance, Partridge, Savannah C, Fitzpatrick, Kimberly A, Borders, Marisa H, Yang, Wei T, Dogan, Basak, Goudreau, Sally, Chenevert, Thomas, Yau, Christina, DeMichele, Angela, Berry, Don, Esserman, Laura J, and Hylton, Nola M
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Dynamic contrast-enhanced (DCE) MRI provides both morphological and functional information regarding breast tumor response to neoadjuvant chemotherapy (NAC). The purpose of this retrospective study is to test if prediction models combining multiple MRI features outperform models with single features. Four features were quantitatively calculated in each MRI exam: functional tumor volume, longest diameter, sphericity, and contralateral background parenchymal enhancement. Logistic regression analysis was used to study the relationship between MRI variables and pathologic complete response (pCR). Predictive performance was estimated using the area under the receiver operating characteristic curve (AUC). The full cohort was stratified by hormone receptor (HR) and human epidermal growth factor receptor 2 (HER2) status (positive or negative). A total of 384 patients (median age: 49 y/o) were included. Results showed analysis with combined features achieved higher AUCs than analysis with any feature alone. AUCs estimated for the combined versus highest AUCs among single features were 0.81 (95% confidence interval [CI]: 0.76, 0.86) versus 0.79 (95% CI: 0.73, 0.85) in the full cohort, 0.83 (95% CI: 0.77, 0.92) versus 0.73 (95% CI: 0.61, 0.84) in HR-positive/HER2-negative, 0.88 (95% CI: 0.79, 0.97) versus 0.78 (95% CI: 0.63, 0.89) in HR-positive/HER2-positive, 0.83 (95% CI not available) versus 0.75 (95% CI: 0.46, 0.81) in HR-negative/HER2-positive, and 0.82 (95% CI: 0.74, 0.91) versus 0.75 (95% CI: 0.64, 0.83) in triple negatives. Multi-feature MRI analysis improved pCR prediction over analysis of any individual feature that we examined. Additionally, the improvements in prediction were more notable when analysis was conducted according to cancer subtype.
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- 2020
12. Retrospective Correction of ADC for Gradient Nonlinearity Errors in Multicenter Breast DWI Trials: ACRIN6698 Multiplatform Feasibility Study
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Malyarenko, Dariya I, Newitt, David C, Amouzandeh, Ghoncheh, Wilmes, Lisa J, Tan, Ek T, Marinelli, Luca, Devaraj, Ajit, Peeters, Johannes M, Giri, Shivraman, Endt, Axel Vom, Hylton, Nola M, Partridge, Savannah C, and Chenevert, Thomas L
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Medical and Biological Physics ,Biomedical and Clinical Sciences ,Clinical Sciences ,Physical Sciences ,Oncology and Carcinogenesis ,Clinical Trials and Supportive Activities ,Breast Cancer ,Biomedical Imaging ,Clinical Research ,Cancer ,Breast ,Breast Neoplasms ,Diffusion Magnetic Resonance Imaging ,Feasibility Studies ,Female ,Humans ,Nonlinear Dynamics ,Reproducibility of Results ,Retrospective Studies ,Nonuniform diffusion weighting ,gradient nonlinearity bias ,retrospective correction ,multi-platform clinical trials ,breast cancer therapy response ,apparent diffusion coefficient - Abstract
The presented analysis of multisite, multiplatform clinical oncology trial data sought to enhance quantitative utility of the apparent diffusion coefficient (ADC) metric, derived from diffusion-weighted magnetic resonance imaging, by reducing technical interplatform variability owing to systematic gradient nonlinearity (GNL). This study tested the feasibility and effectiveness of a retrospective GNL correction (GNC) implementation for quantitative quality control phantom data, as well as in a representative subset of 60 subjects from the ACRIN 6698 breast cancer therapy response trial who were scanned on 6 different gradient systems. The GNL ADC correction based on a previously developed formalism was applied to trace-DWI using system-specific gradient-channel fields derived from vendor-provided spherical harmonic tables. For quantitative DWI phantom images acquired in typical breast imaging positions, the GNC improved interplatform accuracy from a median of 6% down to 0.5% and reproducibility of 11% down to 2.5%. Across studied trial subjects, GNC increased low ADC (
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- 2020
13. Repeatability and Reproducibility of ADC Histogram Metrics from the ACRIN 6698 Breast Cancer Therapy Response Trial
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Newitt, David C, Amouzandeh, Ghoncheh, Partridge, Savannah C, Marques, Helga S, Herman, Benjamin A, Ross, Brian D, Hylton, Nola M, Chenevert, Thomas L, and Malyarenko, Dariya I
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Biomedical and Clinical Sciences ,Clinical Sciences ,Oncology and Carcinogenesis ,Breast Cancer ,Cancer ,Biomedical Imaging ,Clinical Research ,4.2 Evaluation of markers and technologies ,Detection ,screening and diagnosis ,Benchmarking ,Breast Neoplasms ,Diffusion Magnetic Resonance Imaging ,Female ,Humans ,Reproducibility of Results ,Tumor Burden ,Clinical imaging trials ,breast cancer therapy response ,apparent diffusion coefficient ,ADC repeatability ,ADC histogram analysis - Abstract
Mean tumor apparent diffusion coefficient (ADC) of breast cancer showed excellent repeatability but only moderate predictive power for breast cancer therapy response in the ACRIN 6698 multicenter imaging trial. Previous single-center studies have shown improved predictive performance for alternative ADC histogram metrics related to low ADC dense tumor volume. Using test/retest (TT/RT) 4 b-value diffusion-weighted imaging acquisitions from pretreatment or early-treatment time-points on 71 ACRIN 6698 patients, we evaluated repeatability for ADC histogram metrics to establish confidence intervals and inform predictive models for future therapy response analysis. Histograms were generated using regions of interest (ROIs) defined separately for TT and RT diffusion-weighted imaging. TT/RT repeatability and intra- and inter-reader reproducibility (on a 20-patient subset) were evaluated using wCV and Bland-Altman limits of agreement for histogram percentiles, low-ADC dense tumor volumes, and fractional volumes (normalized to total histogram volume). Pearson correlation was used to reveal connections between metrics and ROI variability across the sample cohort. Low percentiles (15th and 25th) were highly repeatable and reproducible, wCV < 8.1%, comparable to mean ADC values previously reported. Volumetric metrics had higher wCV values in all cases, with fractional volumes somewhat better but at least 3 times higher than percentile wCVs. These metrics appear most sensitive to ADC changes around a threshold of 1.2 μm2/ms. Volumetric results were moderately to strongly correlated with ROI size. In conclusion, Lower histogram percentiles have comparable repeatability to mean ADC, while ADC-thresholded volumetric measures currently have poor repeatability but may benefit from improvements in ROI techniques.
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- 2020
14. Additive value of diffusion‐weighted MRI in the I‐SPY 2 TRIAL
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Li, Wen, Newitt, David C, Wilmes, Lisa J, Jones, Ella F, Arasu, Vignesh, Gibbs, Jessica, La Yun, Bo, Li, Elizabeth, Partridge, Savannah C, Kornak, John, Consortium, on behalf of the I‐SPY 2, Esserman, Laura J, and Hylton, Nola M
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Biomedical and Clinical Sciences ,Clinical Sciences ,Oncology and Carcinogenesis ,Cancer ,Clinical Research ,Prevention ,Clinical Trials and Supportive Activities ,Biomedical Imaging ,Breast Cancer ,Adult ,Aged ,Area Under Curve ,Breast Neoplasms ,Combined Modality Therapy ,Cyclophosphamide ,Diffusion Magnetic Resonance Imaging ,Drug Administration Schedule ,Echo-Planar Imaging ,Female ,Humans ,Middle Aged ,Neoadjuvant Therapy ,Neoplasm Invasiveness ,Neoplasm Staging ,Paclitaxel ,Prospective Studies ,Trastuzumab ,Treatment Outcome ,Tumor Burden ,breast MRI ,breast cancer ,treatment response ,functional tumor volume ,apparent diffusion coefficient ,pathologic complete response ,I-SPY 2 Consortium ,Physical Sciences ,Engineering ,Medical and Health Sciences ,Nuclear Medicine & Medical Imaging ,Clinical sciences - Abstract
BackgroundThe change in apparent diffusion coefficient (ADC) measured from diffusion-weighted imaging (DWI) has been shown to be predictive of pathologic complete response (pCR) for patients with locally invasive breast cancer undergoing neoadjuvant chemotherapy.PurposeTo investigate the additive value of tumor ADC in a multicenter clinical trial setting.Study typeRetrospective analysis of multicenter prospective data.PopulationIn all, 415 patients who enrolled in the I-SPY 2 TRIAL from 2010 to 2014 were included.Field strength/sequence1.5T or 3T MRI system using a fat-suppressed single-shot echo planar imaging sequence with b-values of 0 and 800 s/mm2 for DWI, followed by a T1-weighted sequence for dynamic contrast-enhanced MRI (DCE-MRI) performed at pre-NAC (T0), after 3 weeks of NAC (T1), mid-NAC (T2), and post-NAC (T3).AssessmentFunctional tumor volume and tumor ADC were measured at each MRI exam; pCR measured at surgery was assessed as the binary outcome. Breast cancer subtype was defined by hormone receptor (HR) and human epidermal growth factor receptor 2 (HER2) status.Statistical testsA logistic regression model was used to evaluate associations between MRI predictors with pCR. The cross-validated area under the curve (AUC) was calculated to assess the predictive performance of the model with and without ADC.ResultsIn all, 354 patients (128 HR+/HER2-, 60 HR+/HER2+, 34 HR-/HER2+, 132 HR-/HER2-) were included in the analysis. In the full cohort, adding ADC predictors increased the AUC from 0.76 to 0.78 at mid-NAC and from 0.76 to 0.81 at post-NAC. In HR/HER2 subtypes, the AUC increased from 0.52 to 0.65 at pre-NAC for HR+/HER2-, from 0.67 to 0.73 at mid-NAC and from 0.72 to 0.76 at post-NAC for HR+/HER2+, from 0.71 to 0.81 at post-NAC for triple negatives.Data conclusionThe addition of ADC to standard functional tumor volume MRI showed improvement in the prediction of treatment response in HR+ and triple-negative breast cancer.Level of evidence2 Technical Efficacy Stage: 4 J. Magn. Reson. Imaging 2019;50:1742-1753.
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- 2019
15. A survey by the European Society of Breast Imaging on the implementation of breast diffusion-weighted imaging in clinical practice
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Lo Gullo, Roberto, Sevilimedu, Varadan, Baltzer, Pascal, Le Bihan, Denis, Camps-Herrero, Julia, Clauser, Paola, Gilbert, Fiona J., Iima, Mami, Mann, Ritse M., Partridge, Savannah C., Patterson, Andrew, Sigmund, Eric E., Thakur, Sunitha, Thibault, Fabienne E., Martincich, Laura, and Pinker, Katja
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- 2022
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- View/download PDF
16. List of Contributors
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Amornsiripanitch, Nita, primary, Anaby, Debbie, additional, Arango-Lievano, Margarita, additional, Baltzer, Pascal A.T., additional, Bathen, Tone Frost, additional, Bauer, Ethan Henry, additional, Baxter, Gabrielle C., additional, Bayram, Ersin, additional, Benkert, Thomas, additional, Bildhauer, Petra, additional, Bitencourt, Almir, additional, Boutelier, Timothé, additional, Brun, Lucile, additional, Bucciarelli, Brianna, additional, Campana, Sophie, additional, Chenevert, Thomas L., additional, Daniel, Bruce L., additional, Davis, Adam J., additional, Eskreis-Winkler, Sarah, additional, Feret, Florence, additional, Furman-Haran, Edna, additional, Geerts, Liesbeth, additional, Gibbs, Peter, additional, Gilbert, Fiona J., additional, Grimm, Robert, additional, Hargreaves, Brian, additional, Heacock, Laura, additional, Hermoso, Aurélia, additional, Honda, Maya, additional, Hylton, Nola M., additional, Iima, Mami, additional, Jerome, Neil Peter, additional, Kataoka, Masako, additional, Kazama, Toshiki, additional, Kita, Miho, additional, Kwee, Thomas, additional, Le Bihan, Denis, additional, Li, Wen, additional, Liu, Wei, additional, Lo Gullo, Roberto, additional, Malyarenko, Dariya, additional, Mann, Ritse, additional, McKay, Jessica A., additional, Mitulescu, Anca, additional, Moon, Woo Kyung, additional, Moran, Catherine J., additional, Moy, Linda, additional, Neelavalli, Jaladhar, additional, Nissan, Noam, additional, Partridge, Savannah C., additional, Patterson, Andrew J., additional, Peeters, Johannes M., additional, Pinker, Katja, additional, Reig, Beatriu, additional, Rubie, Ilse, additional, Shimakawa, Ann, additional, Shin, Hee Jung, additional, Sigmund, Eric E., additional, Sklair-Levy, Miri, additional, Takahara, Taro, additional, Thakur, Sunitha B., additional, Thoermer, Gregor, additional, Weiland, Elisabeth, additional, Wilmes, Lisa J., additional, and Woitek, Ramona, additional
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- 2023
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17. Diffusion Tensor Imaging (DTI) of the Breast
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Sigmund, Eric E., primary, Furman-Haran, Edna, additional, Baltzer, Pascal A.T., additional, and Partridge, Savannah C., additional
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- 2023
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18. General Principles and Challenges of Diffusion MRI
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Le Bihan, Denis, primary, Iima, Mami, additional, and Partridge, Savannah C., additional
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- 2023
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19. Diffusion MRI as a Stand-Alone Unenhanced Approach for Breast Imaging and Screening
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Shin, Hee Jung, primary, Moon, Woo Kyung, additional, Amornsiripanitch, Nita, additional, and Partridge, Savannah C., additional
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- 2023
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20. Disease and Treatment Monitoring
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Li, Wen, primary, Newitt, David C., additional, Partridge, Savannah C., additional, and Hylton, Nola M., additional
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- 2023
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21. Test–retest repeatability and reproducibility of ADC measures by breast DWI: Results from the ACRIN 6698 trial
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Newitt, David C, Zhang, Zheng, Gibbs, Jessica E, Partridge, Savannah C, Chenevert, Thomas L, Rosen, Mark A, Bolan, Patrick J, Marques, Helga S, Aliu, Sheye, Li, Wen, Cimino, Lisa, Joe, Bonnie N, Umphrey, Heidi, Ojeda‐Fournier, Haydee, Dogan, Basak, Oh, Karen, Abe, Hiroyuki, Drukteinis, Jennifer, Esserman, Laura J, Hylton, Nola M, and Investigators, for the ACRIN Trial Team and I‐SPY 2 TRIAL
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Biomedical and Clinical Sciences ,Clinical Sciences ,Oncology and Carcinogenesis ,Bioengineering ,Prevention ,Breast Cancer ,Cancer ,Clinical Trials and Supportive Activities ,Clinical Research ,Biomedical Imaging ,Adult ,Aged ,Artifacts ,Biomarkers ,Breast ,Breast Neoplasms ,Chemotherapy ,Adjuvant ,Clinical Trials as Topic ,Contrast Media ,Diffusion Magnetic Resonance Imaging ,Female ,Humans ,Image Interpretation ,Computer-Assisted ,Middle Aged ,Neoadjuvant Therapy ,Neoplasms ,Observer Variation ,Prospective Studies ,Quality Assurance ,Health Care ,Quality Control ,Receptor ,ErbB-2 ,Reproducibility of Results ,Signal-To-Noise Ratio ,breast cancer ,treatment response ,breast MRI ,diffusion ,reproducibility ,ACRIN Trial Team and I-SPY 2 TRIAL Investigators ,Receptor ,erbB-2 ,Physical Sciences ,Engineering ,Medical and Health Sciences ,Nuclear Medicine & Medical Imaging ,Clinical sciences - Abstract
BackgroundQuantitative diffusion-weighted imaging (DWI) MRI is a promising technique for cancer characterization and treatment monitoring. Knowledge of the reproducibility of DWI metrics in breast tumors is necessary to apply DWI as a clinical biomarker.PurposeTo evaluate the repeatability and reproducibility of breast tumor apparent diffusion coefficient (ADC) in a multi-institution clinical trial setting, using standardized DWI protocols and quality assurance (QA) procedures.Study typeProspective.SubjectsIn all, 89 women from nine institutions undergoing neoadjuvant chemotherapy for invasive breast cancer.Field strength/sequenceDWI was acquired before and after patient repositioning using a four b-value, single-shot echo-planar sequence at 1.5T or 3.0T.AssessmentA QA procedure by trained operators assessed artifacts, fat suppression, and signal-to-noise ratio, and determine study analyzability. Mean tumor ADC was measured via manual segmentation of the multislice tumor region referencing DWI and contrast-enhanced images. Twenty cases were evaluated multiple times to assess intra- and interoperator variability. Segmentation similarity was assessed via the Sørenson-Dice similarity coefficient.Statistical testsRepeatability and reproducibility were evaluated using within-subject coefficient of variation (wCV), intraclass correlation coefficient (ICC), agreement index (AI), and repeatability coefficient (RC). Correlations were measured by Pearson's correlation coefficients.ResultsIn all, 71 cases (80%) passed QA evaluation: 44 at 1.5T, 27 at 3.0T; 60 pretreatment, 11 after 3 weeks of taxane-based treatment. ADC repeatability was excellent: wCV = 4.8% (95% confidence interval [CI] 4.0, 5.7%), ICC = 0.97 (95% CI 0.95, 0.98), AI = 0.83 (95% CI 0.76, 0.87), and RC = 0.16 * 10-3 mm2 /sec (95% CI 0.13, 0.19). The results were similar across field strengths and timepoint subgroups. Reproducibility was excellent: interreader ICC = 0.92 (95% CI 0.80, 0.97) and intrareader ICC = 0.91 (95% CI 0.78, 0.96).Data conclusionBreast tumor ADC can be measured with excellent repeatability and reproducibility in a multi-institution setting using a standardized protocol and QA procedure. Improvements to DWI image quality could reduce loss of data in clinical trials.Level of evidence2 Technical Efficacy: Stage 1 J. Magn. Reson. Imaging 2019;49:1617-1628.
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- 2019
22. Diffusion-weighted MRI Findings Predict Pathologic Response in Neoadjuvant Treatment of Breast Cancer: The ACRIN 6698 Multicenter Trial
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Partridge, Savannah C, Zhang, Zheng, Newitt, David C, Gibbs, Jessica E, Chenevert, Thomas L, Rosen, Mark A, Bolan, Patrick J, Marques, Helga S, Romanoff, Justin, Cimino, Lisa, Joe, Bonnie N, Umphrey, Heidi R, Ojeda-Fournier, Haydee, Dogan, Basak, Oh, Karen, Abe, Hiroyuki, Drukteinis, Jennifer S, Esserman, Laura J, Hylton, Nola M, and Investigators, For the ACRIN 6698 Trial Team and I-SPY 2 Trial
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Biomedical and Clinical Sciences ,Oncology and Carcinogenesis ,Breast Cancer ,Clinical Trials and Supportive Activities ,Clinical Research ,Biomedical Imaging ,Cancer ,6.1 Pharmaceuticals ,Evaluation of treatments and therapeutic interventions ,Breast ,Breast Neoplasms ,Chemotherapy ,Adjuvant ,Diffusion Magnetic Resonance Imaging ,Female ,Humans ,Middle Aged ,Neoadjuvant Therapy ,Prospective Studies ,Reproducibility of Results ,Treatment Outcome ,ACRIN 6698 Trial Team and I-SPY 2 Trial Investigators ,Medical and Health Sciences ,Nuclear Medicine & Medical Imaging ,Clinical sciences - Abstract
Purpose To determine if the change in tumor apparent diffusion coefficient (ADC) at diffusion-weighted (DW) MRI is predictive of pathologic complete response (pCR) to neoadjuvant chemotherapy for breast cancer. Materials and Methods In this prospective multicenter study, 272 consecutive women with breast cancer were enrolled at 10 institutions (from August 2012 to January 2015) and were randomized to treatment with 12 weekly doses of paclitaxel (with or without an experimental agent), followed by 12 weeks of treatment with four cycles of anthracycline. Each woman underwent breast DW MRI before treatment, at early treatment (3 weeks), at midtreatment (12 weeks), and after treatment. Percentage change in tumor ADC from that before treatment (ΔADC) was measured at each time point. Performance for predicting pCR was assessed by using the area under the receiver operating characteristic curve (AUC) for the overall cohort and according to tumor hormone receptor (HR)/human epidermal growth factor receptor 2 (HER2) disease subtype. Results The final analysis included 242 patients with evaluable serial imaging data, with a mean age of 48 years ± 10 (standard deviation); 99 patients had HR-positive (hereafter, HR+)/HER2-negative (hereafter, HER2-) disease, 77 patients had HR-/HER2- disease, 42 patients had HR+/HER2+ disease, and 24 patients had HR-/HER2+ disease. Eighty (33%) of 242 patients experienced pCR. Overall, ΔADC was moderately predictive of pCR at midtreatment/12 weeks (AUC = 0.60; 95% confidence interval [CI]: 0.52, 0.68; P = .017) and after treatment (AUC = 0.61; 95% CI: 0.52, 0.69; P = .013). Across the four disease subtypes, midtreatment ΔADC was predictive only for HR+/HER2- tumors (AUC = 0.76; 95% CI: 0.62, 0.89; P < .001). In a test subset, a model combining tumor subtype and midtreatment ΔADC improved predictive performance (AUC = 0.72; 95% CI: 0.61, 0.83) over ΔADC alone (AUC = 0.57; 95% CI: 0.44, 0.70; P = .032.). Conclusion After 12 weeks of therapy, change in breast tumor apparent diffusion coefficient at MRI predicts complete pathologic response to neoadjuvant chemotherapy. © RSNA, 2018 Online supplemental material is available for this article.
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- 2018
23. MRI, Clinical Examination, and Mammography for Preoperative Assessment of Residual Disease and Pathologic Complete Response After Neoadjuvant Chemotherapy for Breast Cancer: ACRIN 6657 Trial.
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Scheel, John R, Kim, Eunhee, Partridge, Savannah C, Lehman, Constance D, Rosen, Mark A, Bernreuter, Wanda K, Pisano, Etta D, Marques, Helga S, Morris, Elizabeth A, Weatherall, Paul T, Polin, Sandra M, Newstead, Gillian M, Esserman, Laura J, Schnall, Mitchell D, and Hylton, Nola M
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Biomedical and Clinical Sciences ,Oncology and Carcinogenesis ,Biomedical Imaging ,Cancer ,Clinical Research ,Clinical Trials and Supportive Activities ,Breast Cancer ,Adult ,Breast Neoplasms ,Female ,Humans ,Magnetic Resonance Imaging ,Mammography ,Middle Aged ,Neoadjuvant Therapy ,Neoplasm Invasiveness ,Neoplasm ,Residual ,Physical Examination ,Preoperative Care ,Prospective Studies ,Treatment Outcome ,Tumor Burden ,clinical examination ,locally advanced breast cancer ,mammography ,MRI ,neoadjuvant chemotherapy ,pathologic complete response ,ACRIN 6657 Trial Team and I-SPY Investigators Network ,Clinical Sciences ,Nuclear Medicine & Medical Imaging ,Clinical sciences - Abstract
ObjectiveThe objective of our study was to determine the accuracy of preoperative measurements for detecting pathologic complete response (CR) and assessing residual disease after neoadjuvant chemotherapy (NACT) in patients with locally advanced breast cancer.Subjects and methodsThe American College of Radiology Imaging Network 6657 Trial prospectively enrolled women with ≥ 3 cm invasive breast cancer receiving NACT. Preoperative measurements of residual disease included longest diameter by mammography, MRI, and clinical examination and functional volume on MRI. The accuracy of preoperative measurements for detecting pathologic CR and the association with final pathology size were assessed for all lesions, separately for single masses and nonmass enhancements (NMEs), multiple masses, and lesions without ductal carcinoma in situ (DCIS).ResultsIn the 138 women with all four preoperative measures, longest diameter by MRI showed the highest accuracy for detecting pathologic CR for all lesions and NME (AUC = 0.76 and 0.84, respectively). There was little difference across preoperative measurements in the accuracy of detecting pathologic CR for single masses (AUC = 0.69-0.72). Longest diameter by MRI and longest diameter by clinical examination showed moderate ability for detecting pathologic CR for multiple masses (AUC = 0.78 and 0.74), and longest diameter by MRI and longest diameter by mammography showed moderate ability for detecting pathologic CR for tumors without DCIS (AUC = 0.74 and 0.71). In subjects with residual disease, longest diameter by MRI exhibited the strongest association with pathology size for all lesions and single masses (r = 0.33 and 0.47). Associations between preoperative measures and pathology results were not significantly influenced by tumor subtype or mammographic density.ConclusionOur results indicate that measurement of longest diameter by MRI is more accurate than by mammography and clinical examination for preoperative assessment of tumor residua after NACT and may improve surgical planning.
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- 2018
24. Breast Cancer Conspicuity on Computed Versus Acquired High b-Value Diffusion-Weighted MRI
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DelPriore, Michaela R., Biswas, Debosmita, Hippe, Daniel S., Zecevic, Mladen, Parsian, Sana, Scheel, John R., Rahbar, Habib, and Partridge, Savannah C.
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- 2021
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25. MR spectroscopy of breast cancer for assessing early treatment response: Results from the ACRIN 6657 MRS trial
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Bolan, Patrick J, Kim, Eunhee, Herman, Benjamin A, Newstead, Gillian M, Rosen, Mark A, Schnall, Mitchell D, Pisano, Etta D, Weatherall, Paul T, Morris, Elizabeth A, Lehman, Constance D, Garwood, Michael, Nelson, Michael T, Yee, Douglas, Polin, Sandra M, Esserman, Laura J, Gatsonis, Constantine A, Metzger, Gregory J, Newitt, David C, Partridge, Savannah C, Hylton, Nola M, and Investigators, for the ACRIN Trial team ISPY‐1
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Biomedical and Clinical Sciences ,Oncology and Carcinogenesis ,Clinical Research ,Cancer ,Biomedical Imaging ,Breast Cancer ,Adult ,Aged ,Algorithms ,Biomarkers ,Tumor ,Breast Neoplasms ,Choline ,Early Detection of Cancer ,Female ,Humans ,Magnetic Resonance Spectroscopy ,Male ,Middle Aged ,Molecular Imaging ,Reproducibility of Results ,Secondary Prevention ,Sensitivity and Specificity ,magnetic resonance spectroscopy ,breast cancer ,choline ,treatment response ,ACRIN Trial team ISPY-1 Investigators ,Physical Sciences ,Engineering ,Medical and Health Sciences ,Nuclear Medicine & Medical Imaging ,Clinical sciences - Abstract
PurposeTo estimate the accuracy of predicting response to neoadjuvant chemotherapy (NACT) in patients with locally advanced breast cancer using MR spectroscopy (MRS) measurements made very early in treatment.Materials and methodsThis prospective Health Insurance Portability and Accountability Act (HIPAA)-compliant protocol was approved by the American College of Radiology and local-site institutional review boards. One hundred nineteen women with invasive breast cancer of ≥3 cm undergoing NACT were enrolled between September 2007 and April 2010. MRS measurements of the concentration of choline-containing compounds ([tCho]) were performed before the first chemotherapy regimen (time point 1, TP1) and 20-96 h after the first cycle of treatment (TP2). The change in [tCho] was assessed for its ability to predict pathologic complete response (pCR) and radiologic response using the area under the receiver operating characteristic curve (AUC) and logistic regression models.ResultsOf the 119 subjects enrolled, only 29 cases (24%) with eight pCRs provided usable data for the primary analysis. Technical challenges in acquiring quantitative MRS data in a multi-site trial setting limited the capture of usable data. In this limited data set, the decrease in tCho from TP1 to TP2 had poor ability to predict either pCR (AUC = 0.53, 95% confidence interval [CI]: 0.27-0.79) or radiologic response (AUC = 0.51, 95% CI: 0.27-0.75).ConclusionThe technical difficulty of acquiring quantitative MRS data in a multi-site clinical trial setting led to a low yield of analyzable data, which was insufficient to accurately measure the ability of early MRS measurements to predict response to NACT.Level of evidence1 Technical Efficacy: Stage 2 J. MAGN. RESON. IMAGING 2017;46:290-302.
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- 2017
26. Imaging for Response Assessment in Cancer Clinical Trials
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Sorace, Anna G., Elkassem, Asser A., Galgano, Samuel J., Lapi, Suzanne E., Larimer, Benjamin M., Partridge, Savannah C., Quarles, C. Chad, Reeves, Kirsten, Napier, Tiara S., Song, Patrick N., Yankeelov, Thomas E., Woodard, Stefanie, and Smith, Andrew D.
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- 2020
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27. Diagnostic Performance of Point-of-Care Apparent Diffusion Coefficient Measures to Reduce Biopsy in Breast Lesions at MRI: Clinical Validation
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Youn, Inyoung, primary, Biswas, Debosmita, additional, Hippe, Daniel S., additional, Winter, Andrea M., additional, Kazerouni, Anum S., additional, Javid, Sara H., additional, Lee, Janie M., additional, Rahbar, Habib, additional, and Partridge, Savannah C., additional
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- 2024
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28. Breast Multiparametric MRI for Prediction of Neoadjuvant Chemotherapy Response in Breast Cancer: The BMMR2 Challenge
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Li, Wen, primary, Partridge, Savannah C., additional, Newitt, David C., additional, Steingrimsson, Jon, additional, Marques, Helga S., additional, Bolan, Patrick J., additional, Hirano, Michael, additional, Bearce, Benjamin Aaron, additional, Kalpathy-Cramer, Jayashree, additional, Boss, Michael A., additional, Teng, Xinzhi, additional, Zhang, Jiang, additional, Cai, Jing, additional, Kontos, Despina, additional, Cohen, Eric A., additional, Mankowski, Walter C., additional, Liu, Michael, additional, Ha, Richard, additional, Pellicer-Valero, Oscar J., additional, Maier-Hein, Klaus, additional, Rabinovici-Cohen, Simona, additional, Tlusty, Tal, additional, Ozery-Flato, Michal, additional, Parekh, Vishwa S., additional, Jacobs, Michael A., additional, Yan, Ran, additional, Sung, Kyunghyun, additional, Kazerouni, Anum S., additional, DiCarlo, Julie C., additional, Yankeelov, Thomas E., additional, Chenevert, Thomas L., additional, and Hylton, Nola M., additional
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- 2024
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29. Neoadjuvant Chemotherapy for Breast Cancer: Functional Tumor Volume by MR Imaging Predicts Recurrence-free Survival-Results from the ACRIN 6657/CALGB 150007 I-SPY 1 TRIAL.
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Hylton, Nola M, Gatsonis, Constantine A, Rosen, Mark A, Lehman, Constance D, Newitt, David C, Partridge, Savannah C, Bernreuter, Wanda K, Pisano, Etta D, Morris, Elizabeth A, Weatherall, Paul T, Polin, Sandra M, Newstead, Gillian M, Marques, Helga S, Esserman, Laura J, Schnall, Mitchell D, and ACRIN 6657 Trial Team and I-SPY 1 TRIAL Investigators
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ACRIN 6657 Trial Team and I-SPY 1 TRIAL Investigators ,Humans ,Breast Neoplasms ,Antineoplastic Combined Chemotherapy Protocols ,Magnetic Resonance Imaging ,Disease-Free Survival ,Treatment Outcome ,Neoadjuvant Therapy ,Tumor Burden ,Follow-Up Studies ,Predictive Value of Tests ,Adult ,Aged ,Middle Aged ,United States ,Female ,Clinical Trials as Topic ,Biopsy ,Large-Core Needle ,Cancer ,Biomedical Imaging ,Breast Cancer ,Clinical Research ,Clinical Trials and Supportive Activities ,4.2 Evaluation of markers and technologies ,Detection ,screening and diagnosis ,Medical and Health Sciences ,Nuclear Medicine & Medical Imaging - Abstract
PurposeTo evaluate volumetric magnetic resonance (MR) imaging for predicting recurrence-free survival (RFS) after neoadjuvant chemotherapy (NACT) of breast cancer and to consider its predictive performance relative to pathologic complete response (PCR).Materials and methodsThis HIPAA-compliant prospective multicenter study was approved by institutional review boards with written informed consent. Women with breast tumors 3 cm or larger scheduled for NACT underwent dynamic contrast-enhanced MR imaging before treatment (examination 1), after one cycle (examination 2), midtherapy (examination 3), and before surgery (examination 4). Functional tumor volume (FTV), computed from MR images by using enhancement thresholds, and change from baseline (ΔFTV) were measured after one cycle and before surgery. Association of RFS with FTV was assessed by Cox regression and compared with association of RFS with PCR and residual cancer burden (RCB), while controlling for age, race, and hormone receptor (HR)/ human epidermal growth factor receptor type 2 (HER2) status. Predictive performance of models was evaluated by C statistics.ResultsFemale patients (n = 162) with FTV and RFS were included. At univariate analysis, FTV2, FTV4, and ΔFTV4 had significant association with RFS, as did HR/HER2 status and RCB class. PCR approached significance at univariate analysis and was not significant at multivariate analysis. At univariate analysis, FTV2 and RCB class had the strongest predictive performance (C statistic = 0.67; 95% confidence interval [CI]: 0.58, 0.76), greater than for FTV4 (0.64; 95% CI: 0.53, 0.74) and PCR (0.57; 95% CI: 0.39, 0.74). At multivariate analysis, a model with FTV2, ΔFTV2, RCB class, HR/HER2 status, age, and race had the highest C statistic (0.72; 95% CI: 0.60, 0.84).ConclusionBreast tumor FTV measured by MR imaging is a strong predictor of RFS, even in the presence of PCR and RCB class. Models combining MR imaging, histopathology, and breast cancer subtype demonstrated the strongest predictive performance in this study.
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- 2016
30. The ISMRM Open Science Initiative for Perfusion Imaging (OSIPI): Results from the OSIPI–Dynamic Contrast‐Enhanced challenge
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Shalom, Eve S., primary, Kim, Harrison, additional, van der Heijden, Rianne A., additional, Ahmed, Zaki, additional, Patel, Reyna, additional, Hormuth, David A., additional, DiCarlo, Julie C., additional, Yankeelov, Thomas E., additional, Sisco, Nicholas J., additional, Dortch, Richard D., additional, Stokes, Ashley M., additional, Inglese, Marianna, additional, Grech‐Sollars, Matthew, additional, Toschi, Nicola, additional, Sahoo, Prativa, additional, Singh, Anup, additional, Verma, Sanjay K., additional, Rathore, Divya K., additional, Kazerouni, Anum S., additional, Partridge, Savannah C., additional, LoCastro, Eve, additional, Paudyal, Ramesh, additional, Wolansky, Ivan A., additional, Shukla‐Dave, Amita, additional, Schouten, Pepijn, additional, Gurney‐Champion, Oliver J., additional, Jiřík, Radovan, additional, Macíček, Ondřej, additional, Bartoš, Michal, additional, Vitouš, Jiří, additional, Das, Ayesha Bharadwaj, additional, Kim, S. Gene, additional, Bokacheva, Louisa, additional, Mikheev, Artem, additional, Rusinek, Henry, additional, Berks, Michael, additional, Hubbard Cristinacce, Penny L., additional, Little, Ross A., additional, Cheung, Susan, additional, O'Connor, James P. B., additional, Parker, Geoff J. M., additional, Moloney, Brendan, additional, LaViolette, Peter S., additional, Bobholz, Samuel, additional, Duenweg, Savannah, additional, Virostko, John, additional, Laue, Hendrik O., additional, Sung, Kyunghyun, additional, Nabavizadeh, Ali, additional, Saligheh Rad, Hamidreza, additional, Hu, Leland S., additional, Sourbron, Steven, additional, Bell, Laura C., additional, and Fathi Kazerooni, Anahita, additional
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- 2023
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31. Dynamic contrast-enhanced breast MRI features correlate with invasive breast cancer angiogenesis
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Xiao, Jennifer, Rahbar, Habib, Hippe, Daniel S., Rendi, Mara H., Parker, Elizabeth U., Shekar, Neal, Hirano, Michael, Cheung, Kevin J., and Partridge, Savannah C.
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- 2021
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32. Six DWI questions you always wanted to know but were afraid to ask: clinical relevance for breast diffusion MRI
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Iima, Mami, Partridge, Savannah C., and Le Bihan, Denis
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- 2020
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33. Accuracy of 3T versus 1.5T breast MRI for pre-operative assessment of extent of disease in newly diagnosed DCIS
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Rahbar, Habib, DeMartini, Wendy B, Lee, Amie Y, Partridge, Savannah C, Peacock, Sue, and Lehman, Constance D
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Patient Safety ,Breast Cancer ,Cancer ,Clinical Research ,Biomedical Imaging ,Detection ,screening and diagnosis ,4.2 Evaluation of markers and technologies ,Adult ,Aged ,Breast Neoplasms ,Carcinoma ,Intraductal ,Noninfiltrating ,Diagnosis ,Differential ,Female ,Humans ,Image Enhancement ,Magnetic Resonance Imaging ,Middle Aged ,Neoplasm Invasiveness ,Preoperative Care ,Prospective Studies ,Reproducibility of Results ,3T ,Breast MRI ,Ductal carcinoma in situ ,Pre-operative ,Clinical Sciences ,Nuclear Medicine & Medical Imaging - Abstract
ObjectivesWhile 3T breast magnetic resonance imaging has increased in use over the past decade, there is little data comparing its use for assessing ductal carcinoma in situ (DCIS) versus 1.5 T. We sought to compare the accuracies of DCIS extent of disease measures on pre-operative 3T versus 1.5 T MRI.MethodsThis institutional review board-approved prospective study included 20 patients with ductal carcinoma in situ diagnosed by core needle biopsy (CNB) who underwent pre-operative breast MRI at both 3T (resolution=0.5 mm×0.5 mm×1.3 mm) and 1.5 T (0.85 mm×0.85 mm×1.6 mm). All patients provided informed consent, and the study was HIPPA compliant. Lesion sizes and imaging characteristics (morphologic and kinetic enhancement) were recorded for the 3 T and 1.5 T examinations. Lesion size measures at both field strengths were correlated to final pathology, and imaging characteristics also were compared.ResultsOf the initial cohort of 20 patients with CNB-diagnosed DCIS, 19 underwent definitive surgery. Median DCIS sizes of these 19 patients were 6mm (range: 0-67 mm) on 3T, 13 mm (0-60 mm) on 1.5 T, and 6mm (0-55 mm) on surgical pathology. Size correlation between MRI and pathology was higher for 3T (Spearman's ρ=0.66, p=0.002) than 1.5 T (ρ=0.36, p=0.13). In 10 women in which a residual area of suspicious enhancement was identified on both field strengths, there was agreement of morphologic description (NME vs. mass) in nine, and no significant difference in dynamic contrast enhanced kinetics at 3T compared to 1.5 T.ConclusionsPre-operative breast MRI at 3T provided higher correlation with final pathology size of DCIS lesions compared to 1.5 T, and may be more accurate for assessment of disease extent prior to definitive surgery.
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- 2015
34. Double reading of automated breast ultrasound with digital mammography or digital breast tomosynthesis for breast cancer screening
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Lee, Janie M., Partridge, Savannah C., Liao, Geraldine J., Hippe, Daniel S., Kim, Adrienne E., Lee, Christoph I., Rahbar, Habib, Scheel, John R., and Lehman, Constance D.
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- 2019
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35. The ISMRM Open Science Initiative for Perfusion Imaging (OSIPI): Results from the OSIPI–Dynamic Contrast‐Enhanced challenge.
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Shalom, Eve S., Kim, Harrison, van der Heijden, Rianne A., Ahmed, Zaki, Patel, Reyna, Hormuth, David A., DiCarlo, Julie C., Yankeelov, Thomas E., Sisco, Nicholas J., Dortch, Richard D., Stokes, Ashley M., Inglese, Marianna, Grech‐Sollars, Matthew, Toschi, Nicola, Sahoo, Prativa, Singh, Anup, Verma, Sanjay K., Rathore, Divya K., Kazerouni, Anum S., and Partridge, Savannah C.
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OPEN scholarship ,PERFUSION imaging ,STANDARD operating procedure ,SOFTWARE development tools - Abstract
Purpose: Ktrans$$ {K}^{\mathrm{trans}} $$ has often been proposed as a quantitative imaging biomarker for diagnosis, prognosis, and treatment response assessment for various tumors. None of the many software tools for Ktrans$$ {K}^{\mathrm{trans}} $$ quantification are standardized. The ISMRM Open Science Initiative for Perfusion Imaging–Dynamic Contrast‐Enhanced (OSIPI‐DCE) challenge was designed to benchmark methods to better help the efforts to standardize Ktrans$$ {K}^{\mathrm{trans}} $$ measurement. Methods: A framework was created to evaluate Ktrans$$ {K}^{\mathrm{trans}} $$ values produced by DCE‐MRI analysis pipelines to enable benchmarking. The perfusion MRI community was invited to apply their pipelines for Ktrans$$ {K}^{\mathrm{trans}} $$ quantification in glioblastoma from clinical and synthetic patients. Submissions were required to include the entrants' Ktrans$$ {K}^{\mathrm{trans}} $$ values, the applied software, and a standard operating procedure. These were evaluated using the proposed OSIPIgold$$ \mathrm{OSIP}{\mathrm{I}}_{\mathrm{gold}} $$ score defined with accuracy, repeatability, and reproducibility components. Results: Across the 10 received submissions, the OSIPIgold$$ \mathrm{OSIP}{\mathrm{I}}_{\mathrm{gold}} $$ score ranged from 28% to 78% with a 59% median. The accuracy, repeatability, and reproducibility scores ranged from 0.54 to 0.92, 0.64 to 0.86, and 0.65 to 1.00, respectively (0–1 = lowest–highest). Manual arterial input function selection markedly affected the reproducibility and showed greater variability in Ktrans$$ {K}^{\mathrm{trans}} $$ analysis than automated methods. Furthermore, provision of a detailed standard operating procedure was critical for higher reproducibility. Conclusions: This study reports results from the OSIPI‐DCE challenge and highlights the high inter‐software variability within Ktrans$$ {K}^{\mathrm{trans}} $$ estimation, providing a framework for ongoing benchmarking against the scores presented. Through this challenge, the participating teams were ranked based on the performance of their software tools in the particular setting of this challenge. In a real‐world clinical setting, many of these tools may perform differently with different benchmarking methodology. [ABSTRACT FROM AUTHOR]
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- 2024
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36. Update on DWI for Breast Cancer Diagnosis and Treatment Monitoring
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Gullo, Roberto Lo, primary, Partridge, Savannah C., additional, Shin, Hee Jung, additional, Thakur, Sunitha B., additional, and Pinker, Katja, additional
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- 2023
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37. Breast MRI Technique
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Rahbar, Habib, Strigel, Roberta M., Partridge, Savannah C., Heller, Samantha L., editor, and Moy, Linda, editor
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- 2017
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38. Management of high-risk breast lesions found on mammogram or ultrasound: the value of contrast-enhanced MRI to exclude malignancy
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Hammersley, Jill A., Partridge, Savannah C., Blitzer, Grace C., Deitch, Sarah, and Rahbar, Habib
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- 2018
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39. Visibility of mammographically occult breast cancer on diffusion-weighted MRI versus ultrasound
- Author
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Amornsiripanitch, Nita, Rahbar, Habib, Kitsch, Averi E., Lam, Diana L., Weitzel, Brett, and Partridge, Savannah C.
- Published
- 2018
- Full Text
- View/download PDF
40. Associations of Multiparametric Breast MRI Features, Tumor-Infiltrating Lymphocytes, and Immune Gene Signature Scores Following a Single Dose of Trastuzumab in HER2-Positive Early-Stage Breast Cancer
- Author
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Kennedy, Laura C., primary, Kazerouni, Anum S., additional, Chau, Bonny, additional, Biswas, Debosmita, additional, Alvarez, Rebeca, additional, Durenberger, Grace, additional, Dintzis, Suzanne M., additional, Stanton, Sasha E., additional, Partridge, Savannah C., additional, and Gadi, Vijayakrishna, additional
- Published
- 2023
- Full Text
- View/download PDF
41. Comparative Performance of Contrast-enhanced Mammography, Abbreviated Breast MRI, and Standard Breast MRI for Breast Cancer Screening
- Author
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Lawson, Marissa B., primary, Partridge, Savannah C., additional, Hippe, Daniel S., additional, Rahbar, Habib, additional, Lam, Diana L., additional, Lee, Christoph I., additional, Lowry, Kathryn P., additional, Scheel, John R., additional, Parsian, Sana, additional, Li, Isabella, additional, Biswas, Debosmita, additional, Bryant, Mary Lynn, additional, and Lee, Janie M., additional
- Published
- 2023
- Full Text
- View/download PDF
42. Data from Blood Flow-Metabolism Mismatch: Good for the Tumor, Bad for the Patient
- Author
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Mankoff, David A., primary, Dunnwald, Lisa K., primary, Partridge, Savannah C., primary, and Specht, Jennifer M., primary
- Published
- 2023
- Full Text
- View/download PDF
43. Related Article from Blood Flow-Metabolism Mismatch: Good for the Tumor, Bad for the Patient
- Author
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Mankoff, David A., primary, Dunnwald, Lisa K., primary, Partridge, Savannah C., primary, and Specht, Jennifer M., primary
- Published
- 2023
- Full Text
- View/download PDF
44. Diffusion-weighted imaging reflects variable cellularity and stromal density present in breast fibroadenomas
- Author
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Parsian, Sana, Giannakopoulos, Nadia V., Rahbar, Habib, Rendi, Mara H., Chai, Xiaoyu, and Partridge, Savannah C.
- Published
- 2016
- Full Text
- View/download PDF
45. How Can Advanced Imaging Be Used to Mitigate Potential Breast Cancer Overdiagnosis?
- Author
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Rahbar, Habib, McDonald, Elizabeth S., Lee, Janie M., Partridge, Savannah C., and Lee, Christoph I.
- Published
- 2016
- Full Text
- View/download PDF
46. Multiparametric MR Imaging of Breast Cancer
- Author
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Rahbar, Habib and Partridge, Savannah C.
- Published
- 2016
- Full Text
- View/download PDF
47. Can MRI biomarkers at 3 T identify low-risk ductal carcinoma in situ?
- Author
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Rahbar, Habib, Parsian, Sana, Lam, Diana L., Dontchos, Brian N., Andeen, Nicole K., Rendi, Mara H., Lehman, Constance D., and Partridge, Savannah C.
- Published
- 2016
- Full Text
- View/download PDF
48. Assessment of Quantitative Magnetic Resonance Imaging Background Parenchymal Enhancement Parameters to Improve Determination of Individual Breast Cancer Risk
- Author
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Lam, Diana L., Hippe, Daniel S., Kitsch, Averi E., Partridge, Savannah C., and Rahbar, Habib
- Published
- 2019
- Full Text
- View/download PDF
49. Apparent diffusion coefficient cannot predict molecular subtype and lymph node metastases in invasive breast cancer: a multicenter analysis
- Author
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Surov, Alexey, Chang, Yun-Woo, Li, Lihua, Martincich, Laura, Partridge, Savannah C., Kim, Jin You, and Wienke, Andreas
- Published
- 2019
- Full Text
- View/download PDF
50. Diffusion tensor imaging for characterizing tumor microstructure and improving diagnostic performance on breast MRI: a prospective observational study
- Author
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Luo, Jing, Hippe, Daniel S., Rahbar, Habib, Parsian, Sana, Rendi, Mara H., and Partridge, Savannah C.
- Published
- 2019
- Full Text
- View/download PDF
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