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  1. Article ; Online: Suite of decision tree-based classification algorithms on cancer gene expression data

    Mohmad Badr Al Snousy / Hesham Mohamed El-Deeb / Khaled Badran / Ibrahim Ali Al Khlil

    Egyptian Informatics Journal, Vol 12, Iss 2, Pp 73-

    2011  Volume 82

    Abstract: One of the major challenges in microarray analysis, especially in cancer gene expression profiles, is to determine genes or groups of genes that are highly expressed in cancer cells but not in normal cells. Supervised machine learning techniques are used ...

    Abstract One of the major challenges in microarray analysis, especially in cancer gene expression profiles, is to determine genes or groups of genes that are highly expressed in cancer cells but not in normal cells. Supervised machine learning techniques are used with microarray datasets to build classification models that improve the diagnostic of different diseases. In this study, we compare the classification accuracy among nine decision tree methods; which are divided into two main categories; the first is single decision tree C4.5, CART, Decision Stump, Random Tree and REPTree. The second category is ensample decision tree such Bagging (C4.5 and REPTree), AdaBoost (C4.5 and REPTree), ADTree, and Random Forests. In addition to the previous comparative analyses, we evaluate the behaviors of these methods with/without applying attribute selection (A.S.) techniques such as Chi-square attribute selection and Gain Ratio attribute selection. Usually, the ensembles learning methods: bagging, boosting, and Random Forest; enhanced classification accuracy of single decision tree due to the natures of its mechanism which generate several classifiers from one dataset and vote for their classification decision. The values of enhancement fluctuate between (4.99–6.19%). In majority of datasets and classification methods, Gain ratio attribute selection slightly enhanced the classification accuracy (∼1.05%) due to the concentration on the most promising genes having the effective information gain that discriminate the dataset. Also, Chi-square attributes evaluation for ensemble classifiers slightly decreased the classification accuracy due to the elimination of some informative genes.
    Keywords DNA microarray ; Cancer ; Classification ; Decision trees ; Ensample decision tree ; Attribute selection ; Electronic computers. Computer science ; QA75.5-76.95
    Subject code 006
    Language English
    Publishing date 2011-07-01T00:00:00Z
    Publisher Elsevier
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  2. Article ; Online: External validation and recalibration of an incidental meningioma prognostic model – IMPACT

    Julie Woodfield / Boris Krischek / Giles Critchley / Damian Holliman / Angelos Kolias / Thomas Santarius / Ola Rominiyi / Michael McDermott / Michael D Jenkinson / Jörg-Christian Tonn / Mohsen Javadpour / Andrea Saladino / Tiit Illimar Mathiesen / Rory Piper / Michael Vogelbaum / Chaya Brodie / Sara Venturini / Daniel M Fountain / Roland Goldbrunner /
    Elliot Tilling / Felix Sahm / Priscilla Brastianos / Rory J Piper / Antonio Santoro / Sylvia Kurz / Pierfrancesco Lapolla / Andrea Mingoli / Jennifer Brown / Debraj Mukherjee / Simon Walling / Andrew Morokoff / Patrick Wen / Ghazaleh Tabatabai / Jill Barnholtz-Sloan / Ryan K Mathew / Alexander Smedley / Helen Shih / William Taylor / Minh Nguyen / Bryony Ford / Samantha J Mills / Tamara Ali / Ruwanthi Kolamunnage-Dona / Josephine Jung / Muhammed Elhadi / Erminia Albanese / Aswin Chari / David Rowland / Melissa Gough / Michael Cearns / Simon Lammy / Yasir Chowdhury / Christian Mawrin / Mahmoud Saleh / Jens Schittenhelm / Farshad Nassiri / Raymond Huang / Pietro Familiari / Manfred Westphal / Warren Selman / Daniel Brown / Nathan McSorley / Oliver Hanemann / Richard Pullicino / Francesco Gaillard / Mirjam Renovanz / Chris Barrett / Christine Jungk / Aaron Cohen-Gadol / Javier Martín-Alonso / Gelareh Zadeh / Hytham Hamid / Abdurrahman I Islim / Christopher P Millward / Shaveta Mehta / Usama Ali / Shelli Diane Koszdin / Theo Georgious / Andrew R Brodbelt / Mohamed Abdelsadg / Suhaib Abualsaud / Amro Abuleil / Kevin Agyemang / Hanan Akbari / Likhith Alakandy / Clarissa Alfonso / Arousa Ali / Michael Amoo / Mohamed A. R. Arbab / Mutiu Asha / Kareem Austin / Khaled Badran / Jarnail Bal / Parameswaran Bhattathiri / Paul M. Brennan / Andrew R. Brodbelt / Ferran Brugada-Bellsolà / Placido Bruzzaniti / Annabel Butcher / Rory S. Cairns / Michael Canty / Sachiv Chakravarti / Rebecca Chave-Cox / Anna Craig-McQuade / Peter Crossley / Elizabeth Culpin / Alessia D'Amico / Bassam Dabbous / Pedro David Delgado-López / Mohamed Draz / Katharine J. Drummond / Rusiru T. Ekanayaka / Ibrahim Elmaadawi / Omar Elmandouh / Mazin Elsharif / Daisy Evans / Andreas Fahlström / Fleur L. Fisher / Daniel M. Fountain / Keiko Fox / Chloé Gelder / Shamayitri Ghosh / Aimee Goel / Athanasios Grivas / Andrew Gvozdanovic / Allan Hall / Liv Hartrick / Samih Hassan / Jack Henry / Abdurrahman I. Islim / Asgeir S. Jakola / Michael D. Jenkinson / Sanjeeva Jeyaretna / Adrian Jimenez / Andranik Kahramanian / Neeraj Kalra / David O. Kamson / Oliver Kennion / Adham M. Khalafallah / Sarah Kingdon / Howra Ktayen / Aditaya Kumar / Jun Yi Lau / Jing Xian Lee / Ryan Leyden / Patricia Littlechild / Sophie Liu / Darmanin Lora-Kay / Vivia Lung / Stephen T. Magill / Hani J. Marcus / Fawaz E. Marhoom / Ryan K. Mathew / Calan Mathieson / Tobias Mederer / Torstien R. Meling / Samantha J. Mills / Christopher P. Millward / Mujtaba Mohammad / Amir H. Zamanipoor Najafabadi / Olivia Näslund / Imran Noorani / Gildas Patet / Omar N. Pathmanaban / Andrea Perera / Amit Persad / See Yung Phang / Rory J. Piper / Jonathan Pollock / Benjamin Price / Martin Proescholdt / James Robins / Bobby Sachdev / Fozia Saeed / Ieva Sataite / Antony Kevin Scafa / Verena Schadewaldt / Syed Wajahat Shah / Mustafa El Sheikh / Zenab Sher / Bente Sandvei Skeie / Agbolahan Sofela / Jerome St George / Torbjørn Strømsnes / Nigel Suttner / Philip Theodosopoulos / Manjul Tripathi / Ismail Ughratdar / James Ulrich / Adithya Varma / Anil Varma / Maria Velicu / Esther Wu / Jacob Young / Giuseppa Zancana / Catherine Zhang / Karolyn Au / Felix Behling / Linda Bi / Nicholas Butowski / Ana Castro / Marta Couce / Francesco Dimeco / Katherine J. Drummond / Ian Dunn / Craig Erker / Michelle Felicella / Eva Galanis / Norbert Galldiks / Caterina Giannini / Christel Herold-Mende / Luke Hnenny / Craig Horbinski / Gerhard Jungwirth / Timothy Kaufmann / Daniel Lachance / Christian Lafougere / Katrin Lamszus / Serge Makarenko / Tathiana Malta / Jennifer Moliterno-Gunel / HK Ng / Houtan Noushmehr / Arie Perry / Laila Poisson / Bianco Pollo / Aditya Ragunathan / David Raleigh / Franz Ricklefs / Antonio Santacroce / Christian Schichor / Nils Schimdt / Andrew Sloan / Matija Snuderl / Jim Snyder / Erik Sulman / Suganth Suppiah / Marcos Tatagiba / Marco Timmer / Andreas Von Deimling / Tobias Walbert / Justin Z. Wang / Stephen Yip / Gabriel Zada / Viktor Zherebitskiy / Michael T.C. Poon

    BMJ Open, Vol 12, Iss

    protocol for an international multicentre retrospective cohort study

    2022  Volume 1

    Keywords Medicine ; R
    Language English
    Publishing date 2022-01-01T00:00:00Z
    Publisher BMJ Publishing Group
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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