Outcome prediction in cancer /
This book is organized into 4 sections, each looking at the question of outcome prediction in cancer from a different angle. The first section describes the clinical problem and some of the predicaments that clinicians face in dealing with cancer. Amongst issues discussed in this section are the TNM...
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| Other Authors: | , |
| Format: | eBook |
| Language: | English |
| Published: |
Amsterdam ; Boston :
Elsevier,
[2007]
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| Edition: | 1st ed. |
| Subjects: | |
| Online Access: | Connect to the full text of this electronic book |
Table of Contents:
- Section 1 The Clinical Problem.
- THE PREDICTIVE VALUE OF DETAILED HISTOLOGICAL STAGING OF SURGICAL RESECTION SPECIMENS IN ORAL CANCER
- Chapter 1: The predictive value of detailed histological staging of surgical resection specimens in oral cancer.
- J. Woolgar
- Liverpool Dental School, UK
- Chapter 2: Survival after Treatment of Intraocular Melanoma.
- B.E. Damato, A.F.G. Taktak,
- Royal Liverpool University Hospital, UK
- Chapter 3: Recent developments in relative survival analysis.
- T. Hakulinen, T.A. Dyba,
- Finnish Cancer Registry
- Section 2 Biological and Genetic Factors
- Chapter 4: Environmental and genetic risk factors of lung cancer.
- A. Cassidy, J.K. Field,
- University of Liverpool, UK
- Chapter 5: Chaos, cancer, the cellular operating system and the prediction of survival in head and neck cancer.
- A.S. Jones,
- University Hospital Aintree, UK
- Section 3 Mathematical Background of Prognostic Models
- Chapter 6: Flexible hazard modelling for outcome prediction in cancer - perspectives for the use of bioinformatics knowledge.
- E.Biganzoli1, P. Boracchi2
- 1 Istituto Nazionale per lo Studio e la Cura dei Tumori, Milano, Italy
- 2 Universit̉ degli Studi di Milano, Milano, Italy
- Chapter 7: Information geometry for survival analysis and feature selection by neural networks.
- A. Eleuteri 1,2, R. Tagliaferri 3,4, L. Milano 1,2, M. De Laurentiis 1
- 1Universit̉ di Napoli, Italy
- 2INFN sez. Napoli, Italy
- 3Universit`a di Salerno, Italy
- 4INFN sez. distaccata di Salerno, Italy
- Chapter 8: Artificial neural networks used in the survival analysis of breast cancer patients: A node negative study.
- C.T.C. Arsene, P.J. Lisboa,
- Liverpool John Moores University, UK
- Section 4 Application of Machine Learning Methods
- Chapter 9: The use of artificial neural networks for the diagnosis and estimation of prognosis in cancer patients.
- A. Marchevsky,
- Cedars-Sinai Medical Center, Los Angeles, USA
- Chapter 10: Machine learning contribution to solve prognosis medical problems.
- F. Baronti, A. Micheli, A. Passaro, A.Starita,
- University of Pisa, Italy
- Chapter 11: Classification of brain tumours by pattern recognition of Magnetic Resonance Imaging and Spectroscopic data.
- A. Devos1, S. Van Huffel1 A.W. Simonetti1, M. van der Graaf2, A. Heerschap2, L.M.C. Buydens3
- 1Katholieke Universiteit Leuven, Belgium
- 2University Nijmegen Medical Centre, The Netherlands
- 3Radboud University Nijmegen, The Netherlands
- Chapter 12: Towards automatic risk analysis for hereditary non-polyposis colorectal cancer based on pedigree data.
- M. Kokuer1, R.N.G. Naguib1, P. Jancovic2, H.B. Younghusband3, R. Green3
- 1Coventry University, UK
- 2University of Birmingham, UK
- 3University of Newfoundland, Canada
- Chapter 13: The impact of microarray technology in brain cancer.
- M. Kounelakis1, M. Zervakis1, X. Kotsiakis2
- 1Technical University of Crete, GREECE
- 2District Hospital of Chania, GREECE
- Section 5 Dissemination of Information
- Chapter 14: The web and the new generation of medical information.
- J.M. Fonseca, A.D. Mora, P. Barroso
- University of Lisbon, Portugal
- Chapter 15: Geoconda: a web environment for multi-centre research.
- C. Setzkorn, A.F.G. Taktak, B.E. Damato
- Royal Liverpool University Hospital, Liverpool, UK
- Chapter 16: The development and execution of medical prediction models.
- M.W. Kattan1, M. G̲nen2, P.T. Scardino2
- 1The Cleveland Clinic Fondation, Cleveland, USA
- 2Memorial Sloan-Kettering Cancer Center, New York, USA.
- The predictive value of detailed histological staging of surgical resection specimens in oral cancer
- Survival after treatment of intraocular melanoma
- Recent developments in relative survival analysis
- Environmental and genetic risk factors of lung cancer
- Chaos, cancer, the cellular operating system and the prediction of survival in head and neck cancer
- Flexible hazard modelling for outcome prediction in cancer: perspectives for the use of bioinformatics knowledge
- Information geometry for survival analysis and feature selection by neural networks
- Artificial neural networks used in the survival analysis of breast cancer patients: a node-negative study
- The use of artificial neural networks for the diagnosis and estimation of prognosis in cancer patients
- Machine learning contribution to solve prognostic medical problems
- Classification of brain tumors by pattern recognition of magnetic resonance imaging and spectroscopic data
- Towards automatic risk analysis for hereditary non-polyposis colorectal cancer based on pedigree data
- The impact of microarray technology in brain cancer
- The web and the new generation of medical information systems
- Geoconda: a web environment for multi-centre research
- The development and execution of medical prediction models.