Anomaly Detection and Artificial Intelligence Identified the Pathogenic Role of Apoptosis and RELB Proto-Oncogene, NF-kB Subunit in Diffuse Large B-Cell Lymphoma
Abstract
:1. Introduction
1.1. Clinicopathological Characteristics and Prognosis of Diffuse Large B-Cell Lymphoma
1.2. Machine Learning and Anomaly Detection
1.2.1. Machine Learning
1.2.2. Segmentation Analysis
1.2.3. Anomaly Detection Analysis
2. Aim
3. Materials and Methods
Model | Description |
---|---|
Anomaly detection | Method that quickly looks for unusual cases based on deviations from the norms of their cluster groups [51]. |
Bayesian Network | Creates a graphical model that shows variables (nodes) linked using arcs. Probabilistic independencies between nodes are displayed. The arcs do not necessarily represent cause and effect [52,53,55,61]. |
C5.0 | Builds a decision tree. It splits the samples on the basis of the variable that provides more information and has more weight. Then, multiple splits are made based on other variables until the cases cannot be further divided. Finally, splits with few contributions to the model are removed. This model can only predict a categorical target [58,62]. |
C&R Tree | The classification and regression (C&R) tree is similar to the C5.0 method. All splits are binary [63]. |
CHAID | Chi-squared Automatic Interaction Detection (CHAID) creates decision trees using calculations based on the chi-square test. Crosstabulations between the input variables and the output are examined, and the variables are ranked according to their significance for selection in the tree model [64,65,66,67,68]. |
Discriminant | Creates a predictive model for group membership [69,70]. |
KNN Algorithm | Nearest Neighbor Analysis classifies cases based on their similarity to other cases. This method identifies the pattern of the data [71]. |
Logistic regression | Also known as nominal regression, it is a method that classifies records based on predictors in a manner similar to linear regression but with a categorical target variable. |
LSVM | The data were classified on the basis of a linear support vector machine. This method is useful for large datasets with many variables [72,73]. |
Neural Network | Basic units, known as neurons, are organized into different layers. The input layer contains nodes with input variables (predictors). The output layer contains nodes with the target fields. Nodes are interconnected by different strengths (weights). The number of hidden layers defines the “deep” of the network. Using training, the weights are changed from random to optimized, and the network replicates the known outcomes [74,75,76,77,78,79]. |
Quest | Quick, Unbiased, Efficient Statistical (QUEST) tree creates a binary classification method. All splits are binary. |
Random Forest | This is an implementation of the bagging algorithm. A collection of decision trees is used to make predictions [80,81,82]. |
Random Trees | It is based on the C&R methodology and uses recursive partitioning to split records into segments with similar outputs [83]. |
SVM | A support vector machine (SVM) is suitable when the dataset contains a very large number of predictors. It is a solid classification and regression technique that does not overfit the training data [84,85]. |
Tree-AS | This method creates a decision tree using CHAID or exhaustive CHAID, which is more time-consuming [52,53,57]. |
XGBoost Linear | Implementation of a gradient boosting algorithm with a linear model as the base [86]. |
XGBoost Tree | Implementation of a gradient boosting algorithm with a tree model as the base [87,88,89,90,91,92,93,94]. |
4. Results
4.1. Anomaly Detection Analysis
4.2. Prediction of Overall Survival Using Machine Learning and Artificial Neural Networks Based on 12 Genes
4.3. Cox Regression Analysis of Overall Survival Using the 12 Genes
4.4. Validation of the Predictive Value of RELB for Overall Survival of Patients Using Gene Set Enrichment Analysis (RCHOP-Treated Cases)
4.5. Immunohistochemical Analysis of RELB and Immune Microenvironment
5. Discussion
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Appendix B
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Gene | Name | Function |
---|---|---|
DPM2 | Dolichyl-Phosphate Mannosyltransferase Subunit 2, Regulatory | Regulation of protein stability |
TRAPPC1 | Trafficking Protein Particle Complex Subunit 1 | Endoplasmic reticulum-to-Golgi vesicle-mediated transport |
HYAL2 | Hyaluronidase 2 | Positive regulation of the extrinsic apoptotic signaling pathway. Related to bladder cancer inflammation and tumor-associated myeloid cells [95] |
TRIM35 | Tripartite Motif Containing 35 | Multiple biological processes, including cell death, glucose metabolism, and innate immune response. Correlation with high infiltration of NK cells in DLBCL [96], tumor suppressor in breast cancer [97], predicts survival in hepatocellular carcinoma, and is related to tumorigenesis |
NUDT18 | Nudix Hydrolase 18 | Elimination of potentially toxic nucleotide metabolites |
TMEM219 | Transmembrane Protein 219 | Apoptosis |
CHCHD10 | Coiled-Coil-Helix-Coiled-Coil-Helix Domain Containing 10 | Positive regulation of mitochondrial outer membrane permeabilization involved in the apoptotic signaling pathway |
IGFBP7 | Insulin-Like Growth Factor Binding Protein 7 | Prostacyclin production and cell adhesion. Related to Epstein–Barr virus tumorigenesis, mantle cell lymphoma, and lung cancer [56,98,99] |
LAMTOR2 | Late Endosomal/Lysosomal Adaptor, MAPK, a nd MTOR Activator 2 | Activation of mTORC1, with control of cell growth and related to the risk of breast cancer [100] |
ZNF688 | Zinc Finger Protein 688 | Negative regulation of transcription by RNA polymerase II |
UBL7 | Ubiquitin Like 7 | Ubiquitin-dependent protein catabolic process, cellular response to stress. Autoantibody signature in hepatocellular carcinoma [101]; necroptosis-related marker in stomach adenocarcinoma [102] |
RELB | RELB Proto-Oncogene, NF-KB Subunit | NF-kappa-B is a pleiotropic transcription factor involved in many biological processes, such as inflammation, immunity, differentiation, cell growth, tumorigenesis, and apoptosis. Pathogenic marker of DLBCL [103,104] |
Model | No. of Genes | Overall Accuracy (%) |
---|---|---|
XGBoost Tree | 12 | 99.8 |
Random Forest | 12 | 98.6 |
Random Trees | 12 | 93.9 |
C5 | 7 | 75.4 |
KNN Algorithm | 12 | 73.4 |
CHAID | 5 | 71.7 |
Neural Network | 12 | 71.3 |
Logistic regression | 12 | 71.0 |
LSVM | 12 | 70.1 |
SVM | 12 | 69.3 |
Discriminant | 12 | 68.4 |
C&R Tree | 12 | 68.4 |
Tree-AS | 3 | 65.5 |
Quest | 6 | 64.5 |
XGBoost Linear | 12 | 60.2 |
Bayesian Network | 12 | 0.0 |
Gene | B | p Value | Hazard Risk | 95% CI for HR | |
---|---|---|---|---|---|
Lower | Upper | ||||
TRAPPC1 | −0.391 | 0.023 | 0.676 | 0.483 | 0.946 |
HYAL2 | 0.757 | 0.000 | 2.133 | 1.461 | 3.113 |
IGFBP7 | −0.683 | 0.000 | 0.505 | 0.400 | 0.637 |
UBL7 | 0.507 | 0.001 | 1.660 | 1.234 | 2.233 |
RELB | −0.361 | 0.003 | 0.697 | 0.549 | 0.885 |
No. | Symbol | Title | Running Enrichment Score (ES) | Core Enrichment |
---|---|---|---|---|
1 | REL | REL proto-oncogene, NF-kB subunit | 0.0879 | Yes |
2 | LTB | Lymphotoxin beta | 0.1807 | Yes |
3 | RELB | RELB proto-oncogene, NF-kB subunit | 0.2316 | Yes |
4 | TRAF2 | TNF receptor-associated factor 2 | 0.2571 | Yes |
5 | NFKB2 | Nuclear factor kappa B subunit 2 | 0.2892 | Yes |
6 | CD40 | CD40 molecule | 0.3301 | Yes |
7 | MALT1 | MALT1 paracaspase | 0.3536 | Yes |
8 | NFKBID | NFKB inhibitor delta | 0.3914 | Yes |
9 | NFKBIA | NFKB inhibitor alpha | 0.3964 | Yes |
10 | RELA | RELA proto-oncogene, NF-kB subunit | 0.4062 | Yes |
11 | IKBKG | Inhibitor of nuclear factor kappa B kinase regulatory subunit | 0.4174 | Yes |
12 | BCL3 | BCL3 transcription coactivator | 0.4145 | Yes |
13 | TAB1 | TGF-beta activated kinase 1 (MAP3K7) binding protein 1 | 0.4192 | Yes |
14 | TANK | TRAF family member-associated NFKB activator | 0.4068 | No |
15 | NFKBIB | NFKB inhibitor beta | 0.3919 | No |
16 | EZH2 | Enhancer of zeste 2 polycomb repressive complex 2 subunit | 0.3875 | No |
17 | TNFRSF1A | TNF receptor superfamily member 1A | 0.3872 | No |
18 | NFKBIE | NFKB inhibitor epsilon | 0.3934 | No |
19 | IKBKB | Inhibitor of nuclear factor kappa B kinase subunit beta | 0.3868 | No |
20 | SKP1 | S-phase kinase-associated protein 1 | 0.3765 | No |
21 | CHUK | Component of inhibitor of nuclear factor kappa B kinase complex | 0.3782 | No |
22 | NFKB1 | Nuclear factor kappa B subunit 1 | 0.3747 | No |
23 | KPNA1 | Karyopherin subunit alpha 1 | 0.3685 | No |
24 | MAP3K14 | Mitogen-activated protein kinase kinase kinase 14 | 0.2468 | No |
25 | LTBR | Lymphotoxin beta receptor | 0.106 | No |
26 | NFKBIZ | NFKB inhibitor zeta | 0.082 | No |
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Carreras, J.; Hamoudi, R. Anomaly Detection and Artificial Intelligence Identified the Pathogenic Role of Apoptosis and RELB Proto-Oncogene, NF-kB Subunit in Diffuse Large B-Cell Lymphoma. BioMedInformatics 2024, 4, 1480-1505. https://doi.org/10.3390/biomedinformatics4020081
Carreras J, Hamoudi R. Anomaly Detection and Artificial Intelligence Identified the Pathogenic Role of Apoptosis and RELB Proto-Oncogene, NF-kB Subunit in Diffuse Large B-Cell Lymphoma. BioMedInformatics. 2024; 4(2):1480-1505. https://doi.org/10.3390/biomedinformatics4020081
Chicago/Turabian StyleCarreras, Joaquim, and Rifat Hamoudi. 2024. "Anomaly Detection and Artificial Intelligence Identified the Pathogenic Role of Apoptosis and RELB Proto-Oncogene, NF-kB Subunit in Diffuse Large B-Cell Lymphoma" BioMedInformatics 4, no. 2: 1480-1505. https://doi.org/10.3390/biomedinformatics4020081
APA StyleCarreras, J., & Hamoudi, R. (2024). Anomaly Detection and Artificial Intelligence Identified the Pathogenic Role of Apoptosis and RELB Proto-Oncogene, NF-kB Subunit in Diffuse Large B-Cell Lymphoma. BioMedInformatics, 4(2), 1480-1505. https://doi.org/10.3390/biomedinformatics4020081