Use of Artificial Intelligence and Machine Learning Algorithms with Gene Expression Profiling to Predict Recurrent Nonmuscle Invasive Urothelial Carcinoma of the Bladder
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gp-bibliography.bib Revision:1.7917
- @Article{BartschJr:2016:TJU,
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author = "Georg {Bartsch Jr.} and Anirban P. Mitra and
Sheetal A. Mitra and Arpit A. Almal and Kenneth E. Steven and
Donald G. Skinner and David W. Fry and
Peter F. Lenehan and William P. Worzel and Richard J. Cote",
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title = "Use of Artificial Intelligence and Machine Learning
Algorithms with Gene Expression Profiling to Predict
Recurrent Nonmuscle Invasive Urothelial Carcinoma of
the Bladder",
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journal = "The Journal of Urology",
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volume = "195",
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number = "2",
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pages = "493--498",
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year = "2016",
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ISSN = "0022-5347",
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DOI = "doi:10.1016/j.juro.2015.09.090",
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URL = "http://www.sciencedirect.com/science/article/pii/S0022534715049629",
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abstract = "Purpose Due to the high recurrence risk of non-muscle
invasive urothelial carcinoma it is crucial to
distinguish patients at high risk from those with
indolent disease. In this study we used a machine
learning algorithm to identify the genes in patients
with non muscle invasive urothelial carcinoma at
initial presentation that were most predictive of
recurrence. We used the genes in a molecular signature
to predict recurrence risk within 5 years after
transurethral resection of bladder tumour. Materials
and Methods Whole genome profiling was performed on 112
frozen nonmuscle invasive urothelial carcinoma
specimens obtained at first presentation on Human WG-6
BeadChips (Illumina). A genetic programming algorithm
was applied to evolve classifier mathematical models
for outcome prediction. Cross-validation based
resampling and gene use frequencies were used to
identify the most prognostic genes, which were combined
into rules used in a voting algorithm to predict the
sample target class. Key genes were validated by
quantitative polymerase chain reaction. Results The
classifier set included 21 genes that predicted
recurrence. Quantitative polymerase chain reaction was
done for these genes in a subset of 100 patients. A
5-gene combined rule incorporating a voting algorithm
yielded 77percent sensitivity and 85percent specificity
to predict recurrence in the training set, and
69percent and 62percent, respectively, in the test set.
A singular 3-gene rule was constructed that predicted
recurrence with 80percent sensitivity and 90percent
specificity in the training set, and 71percent and
67percent, respectively, in the test set. Conclusions
Using primary nonmuscle invasive urothelial carcinoma
from initial occurrences genetic programming identified
transcripts in reproducible fashion, which were
predictive of recurrence. These findings could
potentially impact nonmuscle invasive urothelial
carcinoma management.",
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keywords = "genetic algorithms, genetic programming, urinary
bladder neoplasms, neoplasm recurrence, local, genome,
algorithms, software",
- }
Genetic Programming entries for
Georg Bartsch Jr
Anirban P Mitra
Sheetal A Mitra
Arpit A Almal
Kenneth E Steven
Donald G Skinner
David W Fry
Peter F Lenehan
William P Worzel
Richard J Cote
Citations