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Machine-Learning-Based Identification of Key Feature RNA-Signature Linked to Diagnosis of Hepatocellular Carcinoma.
Matboli, Marwa; Diab, Gouda I; Saad, Maha; Khaled, Abdelrahman; Roushdy, Marian; Ali, Marwa; ELsawi, Hind A; Aboughaleb, Ibrahim H.
Affiliation
  • Matboli M; Department of Medical Biochemistry and Molecular Biology, Faculty of Medicine Ain Shams University, Cairo 11566, Egypt.
  • Diab GI; Biomedical Engineering Department, Egyptian Armed Forces, Cairo, Egypt.
  • Saad M; Department of Medical Biochemistry and Molecular Biology, Faculty of Medicine, Modern University for Technology and Information, Cairo, Egypt.
  • Khaled A; Bioinformatics Group, Center of Informatics Sciences (CIS), School of Information Technology and Computer Sciences, Nile University, Giza, Egypt.
  • Roushdy M; Department of Medical Biochemistry and Molecular Biology, Faculty of Medicine Ain Shams University, Cairo 11566, Egypt.
  • Ali M; Department of Medical Biochemistry and Molecular Biology, Faculty of Medicine Ain Shams University, Cairo 11566, Egypt.
  • ELsawi HA; Department of Internal Medicine, Badr University in Cairo, Badr City, Egypt.
  • Aboughaleb IH; Department of Internal Medicine, Badr University in Cairo, Badr City, Egypt.
J Clin Exp Hepatol ; 14(6): 101456, 2024.
Article de En | MEDLINE | ID: mdl-39055616
ABSTRACT

Background:

Hepatocellular carcinoma (HCC) is the third prime cause of malignancy-related mortality worldwide. Early and accurate identification of HCC is crucial for good prognosis, efficacy of therapy, and survival rates of the patients. We aimed to develop a machine-learning model incorporating differentially expressed RNA signatures with laboratory parameters to construct an RNA signature-based diagnostic model for HCC.

Methods:

We have used five classifiers (KNN, RF, SVM, LGBM, and DNNs) to predict the liver disease (HCC). The classifiers were trained on 187 samples and then tested on 80 samples. The model included 22 features (age, sex, smoking, cirrhosis, non-cirrhosis, albumin, ALT, AST bilirubin (total and direct), INR, AFP, HBV Ag, HCV Abs, RQmiR-1298, RQmiR-1262, RQmiR-106b-3p, RQmRNARAB11A, and RQSTAT1, RQmRNAATG12, RQLnc-WRAP53, RQLncRNA- RP11-513I15.6).

Results:

LGBM achieved the highest accuracy of 98.75% in predicting HCC among all models surpassing Random Forest (96.25%), DNN (91.25%), SVC (88.75%), and KNN (87.50%).

Conclusion:

Our machine-learning model incorporating the expression data of RAB11A/STAT1/ATG12/miR-1262/miR-1298/miR-106b-3p/lncRNA-RP11-513I15.6/lncRNA-WRAP53 signature and clinical data represents a potential novel diagnostic model for HCC.
Mots clés

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Langue: En Journal: J Clin Exp Hepatol Année: 2024 Type de document: Article Pays d'affiliation: Égypte Pays de publication: Inde

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Langue: En Journal: J Clin Exp Hepatol Année: 2024 Type de document: Article Pays d'affiliation: Égypte Pays de publication: Inde