Prostate cancer identification: quantitative analysis of T2-weighted MR images based on a back propagation artificial neural network model

Computer-aided diagnosis (CAD) systems have been proposed to assist radiologists in making diagnostic decisions by providing helpful information. As one of the most important sequences in prostate magnetic resonance imaging (MRI), image features from T2-weighted images (T2WI) were extracted and evaluated for the diagnostic performances by using CAD. We extracted 12 quantitative image features from prostate T2-weighted MR images. The importance of each feature in cancer identification was compared in the peripheral zone (PZ) and central gland (CG), respectively. The performance of the computer-aided diagnosis system supported by an artificial neural network was tested. With computer-aided analysis of T2-weighted images, many characteristic features with different diagnostic capabilities can be extracted. We discovered most of the features (10/12) had significant difference (P<0.01) between PCa and non-PCa in the PZ, while only five features (sum average, minimum value, standard deviation, 10th percentile, and entropy) had significant difference in CG. CAD prediction by features from T2w images can reach high accuracy and specificity while maintaining acceptable sensitivity. The outcome is convictive and helpful in medical diagnosis.

[1]  Clare Allen,et al.  How good is MRI at detecting and characterising cancer within the prostate? , 2006, European urology.

[2]  Kyung Ah Kim,et al.  Prostate cancer: apparent diffusion coefficient map with T2-weighted images for detection--a multireader study. , 2009, Radiology.

[3]  M. Giger,et al.  Volumetric texture analysis of breast lesions on contrast‐enhanced magnetic resonance images , 2007, Magnetic resonance in medicine.

[4]  C. Metz ROC Methodology in Radiologic Imaging , 1986, Investigative radiology.

[5]  A. Jemal,et al.  Cancer statistics, 2012 , 2012, CA: a cancer journal for clinicians.

[6]  Robert E Lenkinski,et al.  Prostate cancer: accurate determination of extracapsular extension with high-spatial-resolution dynamic contrast-enhanced and T2-weighted MR imaging--initial results. , 2007, Radiology.

[7]  C. Metz,et al.  Maximum likelihood estimation of receiver operating characteristic (ROC) curves from continuously-distributed data. , 1998, Statistics in medicine.

[8]  Steven J Frank,et al.  MR imaging of prostate cancer in radiation oncology: what radiologists need to know. , 2013, Radiographics : a review publication of the Radiological Society of North America, Inc.

[9]  J. Fütterer,et al.  ESUR prostate MR guidelines 2012 , 2012, European Radiology.

[10]  J A Swets,et al.  Staging prostate cancer with MR imaging: a combined radiologist-computer system. , 1997, Radiology.

[11]  Yongyi Yang,et al.  Supervised and unsupervised methods for prostate cancer segmentation with multispectral MRI. , 2010, Medical physics.

[12]  Robert M. Haralick,et al.  Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..

[13]  Steve Halligan,et al.  CAD: how it works, how to use it, performance. , 2013, European journal of radiology.

[14]  P. Babb,et al.  Patterns and trends in prostate cancer incidence, survival, prevalence and mortality. Part I: international comparisons , 2002, BJU international.

[15]  P. Dettmar,et al.  Limited value of endorectal magnetic resonance imaging and transrectal ultrasonography in the staging of clinically localized prostate cancer , 2001, BJU international.

[16]  Vikas Kundra,et al.  Imaging in oncology from the University of Texas M. D. Anderson Cancer Center: diagnosis, staging, and surveillance of prostate cancer. , 2007, AJR. American journal of roentgenology.

[17]  Jayaram K. Udupa,et al.  Interplay between intensity standardization and inhomogeneity correction in MR image processing , 2005, IEEE Transactions on Medical Imaging.

[18]  R E Lenkinski,et al.  Prostate cancer: local staging with endorectal surface coil MR imaging. , 1991, Radiology.

[19]  R. Lenkinski,et al.  Central gland and peripheral zone prostate tumors have significantly different quantitative imaging signatures on 3 tesla endorectal, in vivo T2‐weighted MR imagery , 2012, Journal of magnetic resonance imaging : JMRI.

[20]  C A Roe,et al.  Statistical Comparison of Two ROC-curve Estimates Obtained from Partially-paired Datasets , 1998, Medical decision making : an international journal of the Society for Medical Decision Making.

[21]  Hiroyuki Yoshida,et al.  Volumetric detection of colorectal lesions for noncathartic dual-energy computed tomographic colonography , 2012, 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[22]  Kunio Doi,et al.  Computer-aided diagnosis in thoracic CT. , 2005, Seminars in ultrasound, CT, and MR.

[23]  Thomas Hambrock,et al.  Computerized analysis of prostate lesions in the peripheral zone using dynamic contrast enhanced MRI. , 2008, Medical physics.

[24]  P. Babb,et al.  Patterns and trends in prostate cancer incidence, survival, prevalence and mortality. Part II: individual countries , 2002, BJU international.

[25]  Peter L Choyke,et al.  Imaging prostate cancer: a multidisciplinary perspective. , 2007, Radiology.

[26]  H Y Kressel,et al.  Prostatic carcinoma: staging with MR imaging at 1.5 T. , 1988, Radiology.

[27]  Evis Sala,et al.  Transition zone prostate cancers: features, detection, localization, and staging at endorectal MR imaging. , 2006, Radiology.

[28]  H. Huisman,et al.  Prostate cancer: computer-aided diagnosis with multiparametric 3-T MR imaging--effect on observer performance. , 2013, Radiology.

[29]  Valeria Panebianco,et al.  Advances in magnetic resonance imaging: how they are changing the management of prostate cancer. , 2011, European urology.

[30]  Clare Allen,et al.  Is it time to consider a role for MRI before prostate biopsy? , 2009, Nature Reviews Clinical Oncology.

[31]  Olivier Rouvière,et al.  Evaluation of T2-weighted and dynamic contrast-enhanced MRI in localizing prostate cancer before repeat biopsy , 2009, European Radiology.

[32]  Thomas Hambrock,et al.  Prostate cancer: multiparametric MR imaging for detection, localization, and staging. , 2011, Radiology.

[33]  Hiroyuki Fujimoto,et al.  Clinicopathological statistics on registered prostate cancer patients in Japan: 2000 report from the Japanese Urological Association , 2005, International journal of urology : official journal of the Japanese Urological Association.

[34]  Carole Lartizien,et al.  Computer-aided diagnosis of prostate cancer in the peripheral zone using multiparametric MRI , 2012, Physics in medicine and biology.

[35]  Herbert Y. Kressel,et al.  Prostatic carcinoma: staging with MR imaging at 1.5 T. , 1988 .