Chemotherapy-Response Monitoring of Breast Cancer Patients Using Quantitative Ultrasound-Based Intra-Tumour Heterogeneities
暂无分享,去创建一个
Michael C. Kolios | W. Tran | K. Pritchard | M. Trudeau | G. Czarnota | A. Sadeghi-Naini | S. Gandhi | E. Slodkowska | L. Sannachi | Hadi Tadayyon
[1] Gregory J. Czarnota,et al. Low-frequency ultrasound radiosensitization and therapy response monitoring of tumors: An in vivo study , 2016, 2016 38th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).
[2] Gregory J. Czarnota,et al. Quantitative ultrasound assessment of breast tumor response to chemotherapy using a multi-parameter approach , 2016, Oncotarget.
[3] Ali Sadeghi-Naini,et al. Early detection of chemotherapy-refractory patients by monitoring textural alterations in diffuse optical spectroscopic images. , 2015, Medical physics.
[4] Gregory J. Czarnota,et al. Non-invasive evaluation of breast cancer response to chemotherapy using quantitative ultrasonic backscatter parameters , 2015, Medical Image Anal..
[5] Gregory J. Czarnota,et al. Noninvasive Characterization of Locally Advanced Breast Cancer Using Textural Analysis of Quantitative Ultrasound Parametric Images , 2014, Translational oncology.
[6] G. Czarnota,et al. Quantitative Ultrasound Characterization of Tumor Cell Death: Ultrasound-Stimulated Microbubbles for Radiation Enhancement , 2014, PloS one.
[7] Martin J. Yaffe,et al. Early prediction of therapy responses and outcomes in breast cancer patients using quantitative ultrasound spectral texture , 2014, Oncotarget.
[8] Xia Li,et al. Analyzing Spatial Heterogeneity in DCE- and DW-MRI Parametric Maps to Optimize Prediction of Pathologic Response to Neoadjuvant Chemotherapy in Breast Cancer. , 2014, Translational oncology.
[9] Sarah E Bohndiek,et al. Analysis of image heterogeneity using 2D Minkowski functionals detects tumor responses to treatment , 2014, Magnetic resonance in medicine.
[10] Carsten Denkert,et al. Response-guided neoadjuvant chemotherapy for breast cancer. , 2013, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[11] Jonathan Mamou,et al. Quantitative Ultrasound in Soft Tissues , 2013, Springer Netherlands.
[12] Michael C. Kolios,et al. Low-frequency quantitative ultrasound imaging of cell death in vivo. , 2013, Medical Physics (Lancaster).
[13] Peter Gibbs,et al. Texture analysis in assessment and prediction of chemotherapy response in breast cancer , 2013, Journal of magnetic resonance imaging : JMRI.
[14] Michael C. Kolios,et al. Conventional frequency ultrasonic biomarkers of cancer treatment response in vivo. , 2013, Translational oncology.
[15] Michael C. Kolios,et al. Quantitative Ultrasound Evaluation of Tumor Cell Death Response in Locally Advanced Breast Cancer Patients Receiving Chemotherapy , 2013, Clinical Cancer Research.
[16] Ali Sadeghi-Naini,et al. Evaluation of neoadjuvant chemotherapy response in women with locally advanced breast cancer using ultrasound elastography. , 2013, Translational oncology.
[17] Omar Falou,et al. Quantitative ultrasound spectral parametric maps: Early surrogates of cancer treatment response , 2012, 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.
[18] Hany Soliman,et al. Diffuse optical spectroscopy evaluation of treatment response in women with locally advanced breast cancer receiving neoadjuvant chemotherapy. , 2012, Translational oncology.
[19] Martin J. Yaffe,et al. Imaging innovations for cancer therapy response monitoring , 2012 .
[20] K. Miles,et al. Tumour heterogeneity in oesophageal cancer assessed by CT texture analysis: preliminary evidence of an association with tumour metabolism, stage, and survival. , 2012, Clinical radiology.
[21] Lian-Wen Jin,et al. A robust graph-based segmentation method for breast tumors in ultrasound images. , 2012, Ultrasonics.
[22] J. Bradley,et al. Combined PET/CT image characteristics for radiotherapy tumor response in lung cancer. , 2012, Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology.
[23] Jason B. Nikas,et al. Prognosis of Treatment Response (Pathological Complete Response) in Breast Cancer , 2012, Biomarker insights.
[24] V. Goh,et al. Assessment of response to tyrosine kinase inhibitors in metastatic renal cell cancer: CT texture as a predictive biomarker. , 2011, Radiology.
[25] F. Gallagher,et al. Tumor imaging using hyperpolarized 13C magnetic resonance spectroscopy , 2011, Magnetic resonance in medicine.
[26] Brandon Whitcher,et al. DCE-MRI biomarkers of tumour heterogeneity predict CRC liver metastasis shrinkage following bevacizumab and FOLFOX-6 , 2011, British Journal of Cancer.
[27] Juri G. Gelovani,et al. Methodological and practical challenges for personalized cancer therapies , 2011, Nature Reviews Clinical Oncology.
[28] M. Hatt,et al. Intratumor Heterogeneity Characterized by Textural Features on Baseline 18F-FDG PET Images Predicts Response to Concomitant Radiochemotherapy in Esophageal Cancer , 2011, The Journal of Nuclear Medicine.
[29] Ultan McDermott,et al. Personalized cancer therapy with selective kinase inhibitors: an emerging paradigm in medical oncology. , 2009, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[30] Haibo He,et al. Learning from Imbalanced Data , 2009, IEEE Transactions on Knowledge and Data Engineering.
[31] Michael C. Kolios,et al. Quantitative Ultrasound Characterization of Responses to Radiotherapy in Cancer Mouse Models , 2009, Clinical Cancer Research.
[32] Mitch Dowsett,et al. Emerging Biomarkers and New Understanding of Traditional Markers in Personalized Therapy for Breast Cancer , 2008, Clinical Cancer Research.
[33] Michael C. Kolios,et al. Quantitative ultrasound characterization of cancer radiotherapy effects in vitro. , 2008, International journal of radiation oncology, biology, physics.
[34] Michael C. Kolios,et al. Ultrasound imaging of apoptosis in tumor response: novel preclinical monitoring of photodynamic therapy effects. , 2008, Cancer research.
[35] Kevin Brindle,et al. New approaches for imaging tumour responses to treatment , 2008, Nature Reviews Cancer.
[36] J. Vonesch,et al. Quantitative ultrasonic tissue characterization as a new tool for continuous monitoring of chronic liver remodelling in mice , 2007 .
[37] Ming-Ting Wu,et al. Monitoring breast cancer response to neoadjuvant systemic chemotherapy using parametric contrast-enhanced MRI: a pilot study. , 2007, Academic radiology.
[38] G. Hortobagyi,et al. Prognostic value of pathologic complete response after primary chemotherapy in relation to hormone receptor status and other factors. , 2006, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[39] G. Hortobagyi,et al. Outcome after pathologic complete eradication of cytologically proven breast cancer axillary node metastases following primary chemotherapy. , 2005, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[40] Karol Sikora,et al. Personalized cancer therapy. , 2005, Personalized medicine.
[41] Olsi Rama,et al. Development of ultrasound tomography for breast imaging: technical assessment. , 2005, Medical physics.
[42] T. Powles,et al. Good clinical response of breast cancers to neoadjuvant chemoendocrine therapy is associated with improved overall survival. , 2005, Annals of oncology : official journal of the European Society for Medical Oncology.
[43] William D. O'Brien,et al. Differentiation and characterization of rat mammary fibroadenomas and 4T1 mouse carcinomas using quantitative ultrasound imaging , 2004, IEEE Transactions on Medical Imaging.
[44] S. Giordano,et al. Update on locally advanced breast cancer. , 2003, The oncologist.
[45] A. Hutcheon,et al. A new histological grading system to assess response of breast cancers to primary chemotherapy: prognostic significance and survival. , 2003, Breast.
[46] William D O'Brien,et al. Frequency-dependent attenuation-compensation functions for ultrasonic signals backscattered from random media. , 2002, The Journal of the Acoustical Society of America.
[47] Rainer Linke,et al. 18F-FDG PET and 99mTc-sestamibi scintimammography for monitoring breast cancer response to neoadjuvant chemotherapy: a comparative study , 2001, European Journal of Nuclear Medicine.
[48] C. Baird,et al. The pilot study. , 2000, Orthopedic nursing.
[49] J W Hunt,et al. © 1999 Cancer Research Campaign Article no. bjoc.1999.0724 Ultrasound imaging of apoptosis: high-resolution noninvasive , 2022 .
[50] D. Mankoff,et al. Monitoring the response of patients with locally advanced breast carcinoma to neoadjuvant chemotherapy using [technetium 99m]‐sestamibi scintimammography , 1999, Cancer.
[51] G. Hortobagyi,et al. Clinical course of breast cancer patients with complete pathologic primary tumor and axillary lymph node response to doxorubicin-based neoadjuvant chemotherapy. , 1999, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[52] Anna L. Brown,et al. Effect of preoperative chemotherapy on the outcome of women with operable breast cancer. , 1998, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[53] K. Suzuki,et al. Evaluation of structural change in diffuse liver disease with frequency domain analysis of ultrasound , 1993, Hepatology.
[54] T J Hall,et al. Parametric Ultrasound Imaging from Backscatter Coefficient Measurements: Image Formation and Interpretation , 1990, Ultrasonic imaging.
[55] G. Hortobagyi,et al. Comprehensive management of locally advanced breast cancer , 1990, Cancer.
[56] L. X. Yao,et al. Backscatter Coefficient Measurements Using a Reference Phantom to Extract Depth-Dependent Instrumentation Factors , 1990, Ultrasonic imaging.
[57] R. F. Wagner,et al. Quantitative ultrasonic detection and classification of diffuse liver disease. Comparison with human observer performance. , 1989, Investigative radiology.
[58] F. Foster,et al. Frequency dependence of ultrasound attenuation and backscatter in breast tissue. , 1986, Ultrasound in medicine & biology.
[59] E J Feleppa,et al. Diagnostic spectrum analysis in ophthalmology: a physical perspective. , 1986, Ultrasound in medicine & biology.
[60] Robert M. Haralick,et al. Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..
[61] G. Hortobagyi,et al. Locally advanced breast cancer. , 1973, British medical journal.
[62] Seetha Hari,et al. Learning From Imbalanced Data , 2019, Advances in Computer and Electrical Engineering.
[63] Shivayogi M Hugar,et al. An In Vivo Study , 2015 .
[64] Ali Sadeghi-Naini,et al. Quantitative ultrasound characterization of locally advanced breast cancer by estimation of its scatterer properties. , 2014, Medical physics.
[65] R. Sen,et al. Histopathologic changes following neoadjuvant chemotherapy in locally advanced breast cancer. , 2013, Indian journal of cancer.
[66] Omar Falou,et al. Quantitative ultrasound visualization of cell death: Emerging clinical applications for detection of cancer treatment response , 2012, 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.
[67] Yassin Labyed,et al. Estimate of the attenuation coefficient using a clinical array transducer for the detection of cervical ripening in human pregnancy. , 2011, Ultrasonics.
[68] Michael E. Phelps,et al. Usefulness of 3′-[F-18]Fluoro-3′-deoxythymidine with Positron Emission Tomography in Predicting Breast Cancer Response to Therapy , 2005, Molecular Imaging and Biology.
[69] Michael E Phelps,et al. Positron emission tomography scanning: current and future applications. , 2002, Annual review of medicine.
[70] Michael C. Kolios,et al. Ultrasonic biomicroscopy of viable, dead and apoptotic cells. , 1997, Ultrasound in medicine & biology.
[71] Ernest J. Feleppa,et al. Ultrasonic spectral-parameter imaging of the prostate , 1997, Int. J. Imaging Syst. Technol..
[72] B. Asselain,et al. Neoadjuvant versus adjuvant chemotherapy in premenopausal patients with tumours considered too large for breast conserving surgery: preliminary results of a randomised trial: S6. , 1994, European journal of cancer.
[73] R. F. Wagner,et al. Application of autoregressive spectral analysis to cepstral estimation of mean scatterer spacing , 1993, IEEE Transactions on Ultrasonics, Ferroelectrics and Frequency Control.
[74] A. D. Romig,et al. Image Formation and Interpretation , 1992 .
[75] Evon M. O. Abu-Taieh,et al. Comparative Study , 2020, Definitions.
[76] J Perrin,et al. Global breast attenuation:control group and benign breast diseases. , 1990, Ultrasonic imaging.
[77] E J Feleppa,et al. Comparison of theoretical scattering results and ultrasonic data from clinical liver examinations. , 1988, Ultrasound in medicine & biology.
[78] Peter E. Hart,et al. Nearest neighbor pattern classification , 1967, IEEE Trans. Inf. Theory.
[79] U. G. Dailey. Cancer,Facts and Figures about. , 2022, Journal of the National Medical Association.