Matches in SemOpenAlex for { <https://semopenalex.org/work/W3186404966> ?p ?o ?g. }
- W3186404966 endingPage "16" @default.
- W3186404966 startingPage "1" @default.
- W3186404966 abstract "A cancer tumour consists of thousands of genetic mutations. Even after advancement in technology, the task of distinguishing genetic mutations, which act as driver for the growth of tumour with passengers (Neutral Genetic Mutations), is still being done manually. This is a time-consuming process where pathologists interpret every genetic mutation from the clinical evidence manually. These clinical shreds of evidence belong to a total of nine classes, but the criterion of classification is still unknown. The main aim of this research is to propose a multiclass classifier to classify the genetic mutations based on clinical evidence (i.e., the text description of these genetic mutations) using Natural Language Processing (NLP) techniques. The dataset for this research is taken from Kaggle and is provided by the Memorial Sloan Kettering Cancer Center (MSKCC). The world-class researchers and oncologists contribute the dataset. Three text transformation models, namely, CountVectorizer, TfidfVectorizer, and Word2Vec, are utilized for the conversion of text to a matrix of token counts. Three machine learning classification models, namely, Logistic Regression (LR), Random Forest (RF), and XGBoost (XGB), along with the Recurrent Neural Network (RNN) model of deep learning, are applied to the sparse matrix (keywords count representation) of text descriptions. The accuracy score of all the proposed classifiers is evaluated by using the confusion matrix. Finally, the empirical results show that the RNN model of deep learning has performed better than other proposed classifiers with the highest accuracy of 70%." @default.
- W3186404966 created "2021-08-02" @default.
- W3186404966 creator A5015952277 @default.
- W3186404966 creator A5035923835 @default.
- W3186404966 creator A5066629167 @default.
- W3186404966 creator A5074743573 @default.
- W3186404966 creator A5080424906 @default.
- W3186404966 creator A5081965195 @default.
- W3186404966 date "2021-07-27" @default.
- W3186404966 modified "2023-09-23" @default.
- W3186404966 title "Gene Mutation Classification through Text Evidence Facilitating Cancer Tumour Detection" @default.
- W3186404966 cites W1973186217 @default.
- W3186404966 cites W1987186315 @default.
- W3186404966 cites W2024875479 @default.
- W3186404966 cites W2110627261 @default.
- W3186404966 cites W2131059542 @default.
- W3186404966 cites W2157423592 @default.
- W3186404966 cites W2167010023 @default.
- W3186404966 cites W2268875920 @default.
- W3186404966 cites W2295666590 @default.
- W3186404966 cites W2319197375 @default.
- W3186404966 cites W2346848267 @default.
- W3186404966 cites W2531152553 @default.
- W3186404966 cites W2586248864 @default.
- W3186404966 cites W2604024577 @default.
- W3186404966 cites W2604078450 @default.
- W3186404966 cites W2608333569 @default.
- W3186404966 cites W2614753460 @default.
- W3186404966 cites W2738836339 @default.
- W3186404966 cites W2740810575 @default.
- W3186404966 cites W2742981589 @default.
- W3186404966 cites W2764194391 @default.
- W3186404966 cites W2766433184 @default.
- W3186404966 cites W2767336449 @default.
- W3186404966 cites W2770162183 @default.
- W3186404966 cites W2782620387 @default.
- W3186404966 cites W2791328186 @default.
- W3186404966 cites W2800656874 @default.
- W3186404966 cites W2810576820 @default.
- W3186404966 cites W2844392751 @default.
- W3186404966 cites W2888478394 @default.
- W3186404966 cites W2894573839 @default.
- W3186404966 cites W2902986326 @default.
- W3186404966 cites W2903805501 @default.
- W3186404966 cites W2906053813 @default.
- W3186404966 cites W2907373405 @default.
- W3186404966 cites W2911704378 @default.
- W3186404966 cites W2918408501 @default.
- W3186404966 cites W2921192933 @default.
- W3186404966 cites W2946933691 @default.
- W3186404966 cites W2950387513 @default.
- W3186404966 cites W2956168677 @default.
- W3186404966 cites W2963469601 @default.
- W3186404966 cites W2972526524 @default.
- W3186404966 cites W2974798110 @default.
- W3186404966 cites W3007698544 @default.
- W3186404966 cites W3009142625 @default.
- W3186404966 cites W3015657179 @default.
- W3186404966 cites W3019466234 @default.
- W3186404966 cites W3020344301 @default.
- W3186404966 cites W3023301759 @default.
- W3186404966 cites W3037896840 @default.
- W3186404966 cites W3088196840 @default.
- W3186404966 cites W3092728260 @default.
- W3186404966 cites W3099449837 @default.
- W3186404966 cites W3111084717 @default.
- W3186404966 cites W3119097036 @default.
- W3186404966 cites W3123355411 @default.
- W3186404966 cites W3133177552 @default.
- W3186404966 cites W3135109547 @default.
- W3186404966 cites W3168798228 @default.
- W3186404966 cites W3170518756 @default.
- W3186404966 cites W4229439215 @default.
- W3186404966 doi "https://doi.org/10.1155/2021/8689873" @default.
- W3186404966 hasPubMedCentralId "https://www.ncbi.nlm.nih.gov/pmc/articles/8337154" @default.
- W3186404966 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/34367540" @default.
- W3186404966 hasPublicationYear "2021" @default.
- W3186404966 type Work @default.
- W3186404966 sameAs 3186404966 @default.
- W3186404966 citedByCount "5" @default.
- W3186404966 countsByYear W31864049662022 @default.
- W3186404966 countsByYear W31864049662023 @default.
- W3186404966 crossrefType "journal-article" @default.
- W3186404966 hasAuthorship W3186404966A5015952277 @default.
- W3186404966 hasAuthorship W3186404966A5035923835 @default.
- W3186404966 hasAuthorship W3186404966A5066629167 @default.
- W3186404966 hasAuthorship W3186404966A5074743573 @default.
- W3186404966 hasAuthorship W3186404966A5080424906 @default.
- W3186404966 hasAuthorship W3186404966A5081965195 @default.
- W3186404966 hasBestOaLocation W31864049661 @default.
- W3186404966 hasConcept C104317684 @default.
- W3186404966 hasConcept C108583219 @default.
- W3186404966 hasConcept C119857082 @default.
- W3186404966 hasConcept C138602881 @default.
- W3186404966 hasConcept C147168706 @default.
- W3186404966 hasConcept C154945302 @default.
- W3186404966 hasConcept C169258074 @default.
- W3186404966 hasConcept C2776461190 @default.