Skip to main content
Top
Published in: Journal of Neuro-Oncology 3/2015

01-09-2015 | Laboratory Investigation

A multi-resolution textural approach to diagnostic neuropathology reporting

Authors: Mohammad Faizal Ahmad Fauzi, Hamza Numan Gokozan, Brad Elder, Vinay K. Puduvalli, Christopher R. Pierson, José Javier Otero, Metin N. Gurcan

Published in: Journal of Neuro-Oncology | Issue 3/2015

Login to get access

Abstract

We present a computer aided diagnostic workflow focusing on two diagnostic branch points in neuropathology (intraoperative consultation and p53 status in tumor biopsy specimens) by means of texture analysis via discrete wavelet frames decomposition. For intraoperative consultation, our methodology is capable of classifying glioblastoma versus metastatic cancer by extracting textural features from the non-nuclei region of cytologic preparations based on the imaging characteristics of glial processes, which appear as anisotropic thin linear structures. For metastasis, these are homogeneous in appearance, thus suitable and extractable texture features distinguish the two tissue types. Experiments on 53 images (29 glioblastomas and 24 metastases) resulted in average accuracy as high as 89.7 % for glioblastoma, 87.5 % for metastasis and 88.7 % overall. For p53 interpretation, we detect and classify p53 status by classifying staining intensity into strong, moderate, weak and negative sub-classes. We achieved this by developing a novel adaptive thresholding for detection, a two-step rule based on weighted color and intensity for the classification of positively and negatively stained nuclei, followed by texture classification to classify the positively stained nuclei into the strong, moderate and weak intensity sub-classes. Our detection method is able to correctly locate and distinguish the four types of cells, at 85 % average precision and 88 % average sensitivity rate. These classification methods on the other hand recorded 81 % accuracy in classifying the positive and negative cells, and 60 % accuracy in further classifying the positive cells into the three intensity groups, which is comparable with neuropathologists’ markings.
Appendix
Available only for authorised users
Literature
1.
go back to reference Barker FG 2nd, Davis RL, Chang SM, Prados MD (1996) Necrosis as a prognostic factor in glioblastoma multiforme. Cancer 77:1161–1166CrossRefPubMed Barker FG 2nd, Davis RL, Chang SM, Prados MD (1996) Necrosis as a prognostic factor in glioblastoma multiforme. Cancer 77:1161–1166CrossRefPubMed
2.
go back to reference Kraus JA, Lamszus K, Glesmann N, Beck M, Wolter M, Sabel M, Krex D, Klockgether T, Reifenberger G, Schlegel U (2001) Molecular genetic alterations in glioblastomas with oligodendroglial component. Acta Neuropathol 101:311–320PubMed Kraus JA, Lamszus K, Glesmann N, Beck M, Wolter M, Sabel M, Krex D, Klockgether T, Reifenberger G, Schlegel U (2001) Molecular genetic alterations in glioblastomas with oligodendroglial component. Acta Neuropathol 101:311–320PubMed
3.
go back to reference He J, Mokhtari K, Sanson M, Marie Y, Kujas M, Huguet S, Leuraud P, Capelle L, Delattre JY, Poirier J, Hoang-Xuan K (2001) Glioblastomas with an oligodendroglial component: a pathological and molecular study. J Neuropathol Exp Neurol 60:863–871CrossRefPubMed He J, Mokhtari K, Sanson M, Marie Y, Kujas M, Huguet S, Leuraud P, Capelle L, Delattre JY, Poirier J, Hoang-Xuan K (2001) Glioblastomas with an oligodendroglial component: a pathological and molecular study. J Neuropathol Exp Neurol 60:863–871CrossRefPubMed
4.
go back to reference Nakamura H, Makino K, Kuratsu J (2011) Molecular and clinical analysis of glioblastoma with an oligodendroglial component (GBMO). Brain Tumor Pathol 28:185–190CrossRefPubMed Nakamura H, Makino K, Kuratsu J (2011) Molecular and clinical analysis of glioblastoma with an oligodendroglial component (GBMO). Brain Tumor Pathol 28:185–190CrossRefPubMed
5.
go back to reference Sahm F, Reuss D et al (2014) Farewell to oligoastrocytoma: in situ molecular genetics favor classification as either oligodendroglioma or astrocytoma. Acta Neuropathol 128(4):551–559CrossRefPubMed Sahm F, Reuss D et al (2014) Farewell to oligoastrocytoma: in situ molecular genetics favor classification as either oligodendroglioma or astrocytoma. Acta Neuropathol 128(4):551–559CrossRefPubMed
6.
go back to reference Burger PC, Kleihues P (1989) Cytologic composition of the untreated glioblastoma with implications for evaluation of needle biopsies. Cancer 63:2014–2023CrossRefPubMed Burger PC, Kleihues P (1989) Cytologic composition of the untreated glioblastoma with implications for evaluation of needle biopsies. Cancer 63:2014–2023CrossRefPubMed
7.
go back to reference Kim YH, Nobusawa S, Mittelbronn M, Paulus W, Brokinkel B, Keyvani K, Sure U, Wrede K, Nakazato Y, Tanaka Y, Vital A, Mariani L, Stawski R, Watanabe T, De Girolami U, Kleihues P, Ohgaki H (2010) Molecular classification of low-grade diffuse gliomas. Am J Pathol 177:2708–2714CrossRefPubMedPubMedCentral Kim YH, Nobusawa S, Mittelbronn M, Paulus W, Brokinkel B, Keyvani K, Sure U, Wrede K, Nakazato Y, Tanaka Y, Vital A, Mariani L, Stawski R, Watanabe T, De Girolami U, Kleihues P, Ohgaki H (2010) Molecular classification of low-grade diffuse gliomas. Am J Pathol 177:2708–2714CrossRefPubMedPubMedCentral
8.
go back to reference Otero JJ, Rowitch D, Vandenberg S (2011) OLIG2 is differentially expressed in pediatric astrocytic and in ependymal neoplasms. J Neurooncol 104(2):423–438CrossRefPubMed Otero JJ, Rowitch D, Vandenberg S (2011) OLIG2 is differentially expressed in pediatric astrocytic and in ependymal neoplasms. J Neurooncol 104(2):423–438CrossRefPubMed
9.
go back to reference Weller M et al (2009) Molecular predictors of progression-free and overall survival in patients with newly diagnosed glioblastoma: a prospective translational study of the German glioma network. J Clin Oncol 27(34):5743–5750CrossRefPubMed Weller M et al (2009) Molecular predictors of progression-free and overall survival in patients with newly diagnosed glioblastoma: a prospective translational study of the German glioma network. J Clin Oncol 27(34):5743–5750CrossRefPubMed
10.
go back to reference Varga Z et al (2013) Assessment of HER2 status in breast cancer: overall positivity rate and accuracy by fluorescence in situ hybridization and immunohistochemistry in a single institution over 12 years: a quality control study. BMC Cancer 13:615CrossRefPubMedPubMedCentral Varga Z et al (2013) Assessment of HER2 status in breast cancer: overall positivity rate and accuracy by fluorescence in situ hybridization and immunohistochemistry in a single institution over 12 years: a quality control study. BMC Cancer 13:615CrossRefPubMedPubMedCentral
11.
go back to reference Raghavan R, Steart PV, Weller RO (1990) Cell proliferation patterns in the diagnosis of astrocytomas, anaplastic astrocytomas and glioblastoma multiforme: a Ki-67 study. Neuropathol Appl Neurobiol 16:123–133CrossRefPubMed Raghavan R, Steart PV, Weller RO (1990) Cell proliferation patterns in the diagnosis of astrocytomas, anaplastic astrocytomas and glioblastoma multiforme: a Ki-67 study. Neuropathol Appl Neurobiol 16:123–133CrossRefPubMed
12.
go back to reference Kyritsis AP, Bondy ML, Hess KR, Cunningham JE, Zhu D, Amos CJ, Yung WK, Levin VA, Bruner JM (1995) Prognostic significance of p53 immunoreactivity in patients with glioma. Clin Cancer Res 1:1617–1622PubMed Kyritsis AP, Bondy ML, Hess KR, Cunningham JE, Zhu D, Amos CJ, Yung WK, Levin VA, Bruner JM (1995) Prognostic significance of p53 immunoreactivity in patients with glioma. Clin Cancer Res 1:1617–1622PubMed
13.
go back to reference Mellinghoff IK, Wang MY, Vivanco I, Haas-Kogan DA, Zhu S, Dia EQ, Lu KV, Yoshimoto K, Huang JH, Chute DJ, Riggs BL, Horvath S, Liau LM, Cavenee WK, Rao PN, Beroukhim R, Peck TC, Lee JC, Sellers WR, Stokoe D, Prados M, Cloughesy TF, Sawyers CL, Mischel PS (2005) Molecular determinants of the response of glioblastomas to EGFR kinase inhibitors. N Engl J Med 353:2012–2024CrossRefPubMed Mellinghoff IK, Wang MY, Vivanco I, Haas-Kogan DA, Zhu S, Dia EQ, Lu KV, Yoshimoto K, Huang JH, Chute DJ, Riggs BL, Horvath S, Liau LM, Cavenee WK, Rao PN, Beroukhim R, Peck TC, Lee JC, Sellers WR, Stokoe D, Prados M, Cloughesy TF, Sawyers CL, Mischel PS (2005) Molecular determinants of the response of glioblastomas to EGFR kinase inhibitors. N Engl J Med 353:2012–2024CrossRefPubMed
14.
go back to reference Horbinski C, Miller CR, Perry A (2011) Gone FISHing: clinical lessons learned in brain tumor molecular diagnostics over the last decade. Brain Pathol 21:57–73CrossRefPubMed Horbinski C, Miller CR, Perry A (2011) Gone FISHing: clinical lessons learned in brain tumor molecular diagnostics over the last decade. Brain Pathol 21:57–73CrossRefPubMed
16.
go back to reference Bruner JM, Saya H, Moser RP (1991) Immunocytochemical detection of p53 in human gliomas. Mod Pathol 4:671–674PubMed Bruner JM, Saya H, Moser RP (1991) Immunocytochemical detection of p53 in human gliomas. Mod Pathol 4:671–674PubMed
17.
go back to reference Yemelyanova A, Vang R, Kshirsagar M, Lu D, Marks MA, Shih Ie M, Kurman RJ (2011) Immunohistochemical staining patterns of p53 can serve as a surrogate marker for TP53 mutations in ovarian carcinoma: an immunohistochemical and nucleotide sequencing analysis. Mod Pathol 24:1248–1253CrossRefPubMed Yemelyanova A, Vang R, Kshirsagar M, Lu D, Marks MA, Shih Ie M, Kurman RJ (2011) Immunohistochemical staining patterns of p53 can serve as a surrogate marker for TP53 mutations in ovarian carcinoma: an immunohistochemical and nucleotide sequencing analysis. Mod Pathol 24:1248–1253CrossRefPubMed
18.
go back to reference Ren ZP, Olofsson T, Qu M, Hesselager G, Soussi T, Kalimo H, Smits A, Nister M (2007) Molecular genetic analysis of p53 intratumoral heterogeneity in human astrocytic brain tumors. J Neuropathol Exp Neurol 66:944–954CrossRefPubMed Ren ZP, Olofsson T, Qu M, Hesselager G, Soussi T, Kalimo H, Smits A, Nister M (2007) Molecular genetic analysis of p53 intratumoral heterogeneity in human astrocytic brain tumors. J Neuropathol Exp Neurol 66:944–954CrossRefPubMed
19.
go back to reference Sertel O, Lozanski G, Shana’ah A, Gurcan MN (2010) Computer-aided detection of centroblasts for follicular lymphoma grading using adaptive likelihood-based cell segmentation. IEEE Trans Biomed Eng 57(10):2613–2616CrossRefPubMedPubMedCentral Sertel O, Lozanski G, Shana’ah A, Gurcan MN (2010) Computer-aided detection of centroblasts for follicular lymphoma grading using adaptive likelihood-based cell segmentation. IEEE Trans Biomed Eng 57(10):2613–2616CrossRefPubMedPubMedCentral
20.
go back to reference Sertel O, Kong J, Lozanski G, Shanaah A, Gewirtz A, Racke F, Zhao J, Catalyurek U, Saltz JH, Gurcan M (2008) Computer-assisted grading of follicular lymphoma: high grade differentiation. Mod Pathol 21:371A–371A Sertel O, Kong J, Lozanski G, Shanaah A, Gewirtz A, Racke F, Zhao J, Catalyurek U, Saltz JH, Gurcan M (2008) Computer-assisted grading of follicular lymphoma: high grade differentiation. Mod Pathol 21:371A–371A
21.
go back to reference Sertel O, Kong J, Lozanski G, Catalyurek U, Saltz JH, Gurcan MN (2008) Computerized microscopic image analysis of follicular lymphoma. Proc SPIE Med Imaging 6915:1–11 Sertel O, Kong J, Lozanski G, Catalyurek U, Saltz JH, Gurcan MN (2008) Computerized microscopic image analysis of follicular lymphoma. Proc SPIE Med Imaging 6915:1–11
22.
go back to reference Samsi SS, Krishnamurthy AK, Groseclose M, Caprioli RM, Lozanski G, Gurcan MN (2009) Imaging mass spectrometry analysis for follicular lymphoma grading. In: Proceedings of annual international conference of the IEEE Engineering in Medicine and Biology Society, pp 6969–6972 Samsi SS, Krishnamurthy AK, Groseclose M, Caprioli RM, Lozanski G, Gurcan MN (2009) Imaging mass spectrometry analysis for follicular lymphoma grading. In: Proceedings of annual international conference of the IEEE Engineering in Medicine and Biology Society, pp 6969–6972
23.
go back to reference Samsi S, Lozanski G, Shana’ah A, Krishanmurthy AK, Gurcan MN (2010) Detection of follicles from IHC-stained slides of follicular lymphoma using iterative watershed. IEEE Trans Biomed Eng 57(10):2609–2612CrossRefPubMedPubMedCentral Samsi S, Lozanski G, Shana’ah A, Krishanmurthy AK, Gurcan MN (2010) Detection of follicles from IHC-stained slides of follicular lymphoma using iterative watershed. IEEE Trans Biomed Eng 57(10):2609–2612CrossRefPubMedPubMedCentral
24.
go back to reference Oger M, Belhomme P, Gurcan MN (2012) A general framework for the segmentation of follicular lymphoma virtual slides. Comput Med Imaging Graph 36(6):442–451CrossRefPubMedPubMedCentral Oger M, Belhomme P, Gurcan MN (2012) A general framework for the segmentation of follicular lymphoma virtual slides. Comput Med Imaging Graph 36(6):442–451CrossRefPubMedPubMedCentral
25.
go back to reference Belkacem-Boussaid K, Sertel O, Lozanski G, Shana’aah A, Gurcan M (2009) Extraction of color features in the spectral domain to recognize centroblasts in histopathology. In: Proceedings of annual international conference of the IEEE Engineering in Medicine and Biology Society, pp 3685–3688 Belkacem-Boussaid K, Sertel O, Lozanski G, Shana’aah A, Gurcan M (2009) Extraction of color features in the spectral domain to recognize centroblasts in histopathology. In: Proceedings of annual international conference of the IEEE Engineering in Medicine and Biology Society, pp 3685–3688
26.
27.
go back to reference Teodoro G, Sachetto R, Sertel O, Gurcan MN, Meira W, Catalyurek U, Ferreira R (2009) Coordinating the use of GPU and CPU for improving performance of compute intensive applications. In: Proceedings of IEEE international conference on cluster computing and workshops, pp 437–446 Teodoro G, Sachetto R, Sertel O, Gurcan MN, Meira W, Catalyurek U, Ferreira R (2009) Coordinating the use of GPU and CPU for improving performance of compute intensive applications. In: Proceedings of IEEE international conference on cluster computing and workshops, pp 437–446
28.
go back to reference Sertel O, Kong J, Shimada H, Catalyurek UV, Saltz JH, Gurcan MN (2009) Computer-aided prognosis of neuroblastoma on whole-slide images: classification of stromal development. Pattern Recognit 42(6):1093–1103CrossRefPubMedPubMedCentral Sertel O, Kong J, Shimada H, Catalyurek UV, Saltz JH, Gurcan MN (2009) Computer-aided prognosis of neuroblastoma on whole-slide images: classification of stromal development. Pattern Recognit 42(6):1093–1103CrossRefPubMedPubMedCentral
29.
go back to reference Ruiz A, Sertel O, Ujaldon M, Catalyurek UV, Saltz J, Gurcan MN (2009) Stroma classification for neuroblastoma on graphics processors. Int J Data Min Bioinform 3(3):280–298CrossRefPubMed Ruiz A, Sertel O, Ujaldon M, Catalyurek UV, Saltz J, Gurcan MN (2009) Stroma classification for neuroblastoma on graphics processors. Int J Data Min Bioinform 3(3):280–298CrossRefPubMed
30.
go back to reference Ruiz A, Kong J, Ujaldon M, Boyer K, Saltz J, Gurcan M (2008) Pathological image segmentation for neuroblastoma using the GPU. In: Proceedings of 5th IEEE international symposium on biomedical imaging: from nano to macro, pp 296–299 Ruiz A, Kong J, Ujaldon M, Boyer K, Saltz J, Gurcan M (2008) Pathological image segmentation for neuroblastoma using the GPU. In: Proceedings of 5th IEEE international symposium on biomedical imaging: from nano to macro, pp 296–299
31.
go back to reference Gurcan M, Pan T, Shimada H, Saltz JH (2006) Image analysis for neuroblastoma classification: hysteresis thresholding for cell segmentation. Proceedings of APIII, Vancouver, BC Gurcan M, Pan T, Shimada H, Saltz JH (2006) Image analysis for neuroblastoma classification: hysteresis thresholding for cell segmentation. Proceedings of APIII, Vancouver, BC
32.
go back to reference Cambazoglu B, Sertel O, Kong J, Saltz JH, Gurcan MN, Catalyurek UV (2007) Efficient processing of pathological images using the grid: Computer-aided prognosis of neuroblastoma. In: Proceedings of challenges of large scale applications in distributed environments (CLADE), Monterey Bay, CA, pp 35–41 Cambazoglu B, Sertel O, Kong J, Saltz JH, Gurcan MN, Catalyurek UV (2007) Efficient processing of pathological images using the grid: Computer-aided prognosis of neuroblastoma. In: Proceedings of challenges of large scale applications in distributed environments (CLADE), Monterey Bay, CA, pp 35–41
33.
go back to reference Niazi MKK, Beamer G, Gurcan MN (2013) Detecting and characterizing cellular responses to Mycobacterium tuberculosis from histology slides. Cytometry A Niazi MKK, Beamer G, Gurcan MN (2013) Detecting and characterizing cellular responses to Mycobacterium tuberculosis from histology slides. Cytometry A
34.
go back to reference Niazi MKK, Satoskar A, Gurcan M (2013) An automated method for counting cytotoxic T-cells from CD8 stained images of renal biopsies. In: Proceedings of SPIE medical imaging: digital pathology 8676 Niazi MKK, Satoskar A, Gurcan M (2013) An automated method for counting cytotoxic T-cells from CD8 stained images of renal biopsies. In: Proceedings of SPIE medical imaging: digital pathology 8676
35.
go back to reference Mallat SG (1989) A theory for multiresolution signal decomposition: the wavelet representation. IEEE Trans Pattern Anal Mach Intell 11(7):674–693CrossRef Mallat SG (1989) A theory for multiresolution signal decomposition: the wavelet representation. IEEE Trans Pattern Anal Mach Intell 11(7):674–693CrossRef
36.
go back to reference Unser M (1995) Texture classification and segmentation using wavelet frames. IEEE Trans Image Process 4:1549–1560CrossRefPubMed Unser M (1995) Texture classification and segmentation using wavelet frames. IEEE Trans Image Process 4:1549–1560CrossRefPubMed
37.
go back to reference Chen T, Ma K-K, Chen L-H (1998) Discrete wavelet frame representations of color texture features for image query. In: Proceedings of IEEE second workshop on multimedia signal processing, pp 45–50 Chen T, Ma K-K, Chen L-H (1998) Discrete wavelet frame representations of color texture features for image query. In: Proceedings of IEEE second workshop on multimedia signal processing, pp 45–50
38.
go back to reference Liapis S, Tziritas G (2004) Color and texture image retrieval using chromaticity histograms and wavelet frames. IEEE Trans Multimed 6:676–686CrossRef Liapis S, Tziritas G (2004) Color and texture image retrieval using chromaticity histograms and wavelet frames. IEEE Trans Multimed 6:676–686CrossRef
39.
go back to reference Depeursinge A, Sage D, Hidki A, Platon A, Poletti P-A, Unser M, Muller H (2007) Lung tissue classification using wavelet frames. In: Proceedings of 29th annual international conf erence of the IEEE Engineering in Medicine and Biology Society, pp 6259–6262 Depeursinge A, Sage D, Hidki A, Platon A, Poletti P-A, Unser M, Muller H (2007) Lung tissue classification using wavelet frames. In: Proceedings of 29th annual international conf erence of the IEEE Engineering in Medicine and Biology Society, pp 6259–6262
40.
go back to reference Ahmad Fauzi MF (2009) Optimal discrete wavelet frames features for texture-based image retrieval applications. Lect Notes Comput Sci 5857:66–77CrossRef Ahmad Fauzi MF (2009) Optimal discrete wavelet frames features for texture-based image retrieval applications. Lect Notes Comput Sci 5857:66–77CrossRef
41.
go back to reference Ahmad Fauzi MF, Lewis PH (2008) A multiscale approach to texture-based image retrieval. Pattern Anal Appl 11(2):141–157CrossRef Ahmad Fauzi MF, Lewis PH (2008) A multiscale approach to texture-based image retrieval. Pattern Anal Appl 11(2):141–157CrossRef
42.
go back to reference Ahmad Fauzi MF, Lewis PH (2010) Block-based against segmentation-based texture image retrieval. J Univ Comput Sci 16(3):402–423 Ahmad Fauzi MF, Lewis PH (2010) Block-based against segmentation-based texture image retrieval. J Univ Comput Sci 16(3):402–423
43.
go back to reference Sertel O, Kong J, Catalyurek U, Lozanski G, Saltz J, Gurcan M (2009) Histopathological image analysis using model-based intermediate representations and color texture: follicular lymphoma grading. J Signal Process Syst 55:169–183CrossRef Sertel O, Kong J, Catalyurek U, Lozanski G, Saltz J, Gurcan M (2009) Histopathological image analysis using model-based intermediate representations and color texture: follicular lymphoma grading. J Signal Process Syst 55:169–183CrossRef
44.
go back to reference Sertel O, Catalyurek UV, Shimada H, Gurcan MN (2009) A combined computerized classification system for whole-slide neuroblastoma histology: model-based structural features. In: International conference on medical image computing and computer assisted intervention, pp 7–18 Sertel O, Catalyurek UV, Shimada H, Gurcan MN (2009) A combined computerized classification system for whole-slide neuroblastoma histology: model-based structural features. In: International conference on medical image computing and computer assisted intervention, pp 7–18
45.
go back to reference Sharma S, Deb P (2011) Intraoperative neurocytology of primary central nervous system neoplasia: a simplified and practical diagnostic approach. J Cytol 28(4):147–158CrossRefPubMedPubMedCentral Sharma S, Deb P (2011) Intraoperative neurocytology of primary central nervous system neoplasia: a simplified and practical diagnostic approach. J Cytol 28(4):147–158CrossRefPubMedPubMedCentral
46.
go back to reference Bennett WP et al (1992) Mutational spectra and immunohistochemical analyses of p53 in human cancers. Chest 101(3 Suppl):19S–20SCrossRefPubMed Bennett WP et al (1992) Mutational spectra and immunohistochemical analyses of p53 in human cancers. Chest 101(3 Suppl):19S–20SCrossRefPubMed
47.
go back to reference Iggo R et al (1990) Increased expression of mutant forms of p53 oncogene in primary lung cancer. Lancet 335(8691):675–679CrossRefPubMed Iggo R et al (1990) Increased expression of mutant forms of p53 oncogene in primary lung cancer. Lancet 335(8691):675–679CrossRefPubMed
48.
go back to reference Bartek J, Iggo R, Gannon J, Lane DP (1990) Genetic and immunochemical analysis of mutant p53 in human breast cancer cell lines. Oncogene 5(6):893–899PubMed Bartek J, Iggo R, Gannon J, Lane DP (1990) Genetic and immunochemical analysis of mutant p53 in human breast cancer cell lines. Oncogene 5(6):893–899PubMed
49.
go back to reference Hashimoto T et al (1999) p53 null mutations undetected by immunohistochemical staining predict a poor outcome with early-stage non-small cell lung carcinomas. Cancer Res 59(21):5572–5577PubMed Hashimoto T et al (1999) p53 null mutations undetected by immunohistochemical staining predict a poor outcome with early-stage non-small cell lung carcinomas. Cancer Res 59(21):5572–5577PubMed
50.
go back to reference Przygodzki RM et al (1996) Analysis of p53, K-ras-2, and C-raf-1 in pulmonary neuroendocrine tumors. Correlation with histological subtype and clinical outcome. Am J Pathol 148(5):1531–1541PubMedPubMedCentral Przygodzki RM et al (1996) Analysis of p53, K-ras-2, and C-raf-1 in pulmonary neuroendocrine tumors. Correlation with histological subtype and clinical outcome. Am J Pathol 148(5):1531–1541PubMedPubMedCentral
Metadata
Title
A multi-resolution textural approach to diagnostic neuropathology reporting
Authors
Mohammad Faizal Ahmad Fauzi
Hamza Numan Gokozan
Brad Elder
Vinay K. Puduvalli
Christopher R. Pierson
José Javier Otero
Metin N. Gurcan
Publication date
01-09-2015
Publisher
Springer US
Published in
Journal of Neuro-Oncology / Issue 3/2015
Print ISSN: 0167-594X
Electronic ISSN: 1573-7373
DOI
https://doi.org/10.1007/s11060-015-1872-4

Other articles of this Issue 3/2015

Journal of Neuro-Oncology 3/2015 Go to the issue