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Original article
Analysis of the impact of fatty acid metabolism on immunotherapy for hepatocellular carcinoma
Jinhuan Wanga, Xinmin Jinb,
Corresponding author
573447505@qq.com

Corresponding author.
a Department of Pharmacy, The Affiliated Hospital of Qingdao University, Qingdao 266000, China
b Qingdao University Medical College, Qingdao 266000, China
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while China is the country with the highest burden of liver cancer&#44; accounting for 45&#46;3&#37; of the global new liver cancer cases&#46; In China&#44; there were 410&#44;038 new liver cancer cases in 2020&#44; with a crude incidence rate of 28&#46;3&#47;100&#44;000 and a population-standardized incidence rate of 18&#46;2&#47;100&#44;000&#46; In China&#44; there were 391&#44;152 liver cancer-related deaths in 2020&#44; with a crude case fatality rate of 27&#46;0 per 100&#44;000 and a global population-standardized case fatality rate of 17&#46;2 per 100&#44;000&#46; Chinese liver cancer deaths account for approximately 47&#46;1&#37; of all liver cancer deaths worldwide <a class="elsevierStyleCrossRef" href="#bib0002">&#91;2&#93;</a>&#46; In China&#44; liver cancer is the leading cause of death for people under the age of 65 and the leading cause of death due to malignant tumors&#46; Males in China have a higher incidence and mortality rate of liver cancer than females&#44; and rural areas have a higher incidence and mortality rate than urban areas &#91;<a class="elsevierStyleCrossRef" href="#bib0003">3</a>&#44;<a class="elsevierStyleCrossRef" href="#bib0004">4</a>&#93;&#46; In China&#44; the 5-year survival rate for liver cancer was 12&#46;1&#37; from 2012 to 2015 <a class="elsevierStyleCrossRef" href="#bib0005">&#91;5&#93;</a>&#46;</p><p id="para0006" class="elsevierStylePara elsevierViewall">Due to the need for rapid proliferation and the relative lack of external blood supply in liver cancer tissue&#44; liver cancer cells are frequently in a metabolic stress state characterized by relative hypoxia and insufficient nutrient supply&#46; To adapt to this living environment&#44; liver cancer cells will now undergo a series of metabolic reprogramming processes&#46; In addition to activating glycolysis&#44; reprogramming of lipid metabolism is an important mechanism by which liver cancer cells respond to metabolic stress <a class="elsevierStyleCrossRef" href="#bib0006">&#91;6&#93;</a>&#46; As a component of cell membranes&#44; a source of energy&#44; and a signaling molecule&#44; fat inevitably plays a significant role in cancer <a class="elsevierStyleCrossRefs" href="#bib0007">&#91;7&#8211;11&#93;</a>&#46; Under normal physiological conditions&#44; the liver regulates fat homeostasis and the metabolism of lipoproteins&#46; Damage to liver cells impairs this function&#44; resulting in alterations in lipid metabolism&#44; which play a crucial role in the development of liver cancer&#46; Different from normal tissue cells&#44; the reprogramming of lipid metabolism in liver cancer cells is primarily manifested in lipid metabolism processes such as FA synthesis &#40;FAS&#41; and FA oxidation &#40;FAO&#41;&#46; Under stress&#44; the survival and proliferation of liver cancer cells are highly dependent on the regulation of FAS and FAO &#91;<a class="elsevierStyleCrossRef" href="#bib0012">12</a>&#44;<a class="elsevierStyleCrossRef" href="#bib0013">13</a>&#93;&#46;</p><p id="para0007" class="elsevierStylePara elsevierViewall">Through the gene set associated with FA metabolism&#44; the purpose of this study is to investigate the association between the level of FA metabolism and the clinical indicators and prognosis of HCC&#46; In addition&#44; the relationship between FA metabolism&#44; liver cancer immunotherapy&#44; and the immune microenvironment was investigated&#46; By combining single-cell datasets with bulk datasets&#44; we have gained a deeper understanding of the impact of FA metabolism on HCC&#46;</p></span><span id="sec0002" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2</span><span class="elsevierStyleSectionTitle" id="cesectitle0010">Material and Methods</span><span id="sec0003" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2&#46;1</span><span class="elsevierStyleSectionTitle" id="cesectitle0011">Data set acquisition</span><p id="para0008" class="elsevierStylePara elsevierViewall">The single-cell data set GSE151530 was downloaded from the GEO database&#44; which contained a total of 46 samples of HCC and intrahepatic cholangiocarcinoma&#44; and 16 biopsy samples before and after treatment were collected from seven patients&#46; The expression matrix&#44; corresponding clinical information&#44; and mutation data of HCC samples were extracted from the TCGA database&#44; and the LIRI-JP cohort containing the transcriptomic data of 231 HCC patients was extracted from the ICGC database&#46; GEO database GSE140901 contains 24 HCC samples treated with PD-1&#47;PD-L1 immunotherapy&#46;</p></span><span id="sec0004" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2&#46;2</span><span class="elsevierStyleSectionTitle" id="cesectitle0012">Curation and analysis of single-cell dataset</span><p id="para0009" class="elsevierStylePara elsevierViewall">After integrating the expression matrix data in GSE151530&#44; filter and standardize&#44; then annotate and visualize the dimensionally reduced cluster using SingleR <a class="elsevierStyleCrossRef" href="#bib0014">&#91;14&#93;</a> and Celltype <a class="elsevierStyleCrossRef" href="#bib0015">&#91;15&#93;</a>&#46; Utilize AUCell <a class="elsevierStyleCrossRef" href="#bib0016">&#91;16&#93;</a>to compute and display the FA metabolism score for each group based on the gene set&#46; ClusterProfiler <a class="elsevierStyleCrossRef" href="#bib0017">&#91;17&#93;</a> was utilized to conduct a GSEA analysis of differential genes between various FA metabolism groups&#46; SCEVAN <a class="elsevierStyleCrossRef" href="#bib0018">&#91;18&#93;</a> can distinguish between non-malignant and malignant cells of the tumor microenvironment and characterize the clonal structure of these malignant cells&#46; CellChat <a class="elsevierStyleCrossRef" href="#bib0019">&#91;19&#93;</a>was utilized to evaluate changes in intercellular communication strength and quantity&#46;</p></span><span id="sec0005" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2&#46;3</span><span class="elsevierStyleSectionTitle" id="cesectitle0013">Collection of gene sets and calculation of FPI</span><p id="para0010" class="elsevierStylePara elsevierViewall">The gene set associated with FA metabolism was retrieved from the msigdb database &#40;<a href="https://www.gsea-msigdb.org/gsea/msigdb/">https&#58;&#47;&#47;www&#46;gsea-msigdb&#46;org&#47;gsea&#47;msigdb&#47;</a>&#41;&#46; The gene set associated with immunotherapy-related pathways was obtained from Zu&#39;s article <a class="elsevierStyleCrossRef" href="#bib0020">&#91;20&#93;</a>&#44; while the gene set related to cell death was obtained from published articles and the msigdb database&#46; Using GSVA <a class="elsevierStyleCrossRef" href="#bib0021">&#91;21&#93;</a> to evaluate the enrichment score of positive regulation or negative regulation of FA metabolism in the FA-related metabolic gene set&#44; the difference between the positive regulation score and the negative regulation score is the FPI&#44; which is used to evaluate the difference in FA metabolism intensity between samples&#46;</p></span><span id="sec0006" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2&#46;4</span><span class="elsevierStyleSectionTitle" id="cesectitle0014">Immune microenvironment and immunotherapy analysis</span><p id="para0011" class="elsevierStylePara elsevierViewall">We use GSVA to calculate ImmuneScore&#44; StromalScore&#44; ESTIMATEScore&#44; and TumorPurity&#44; the PCA method to calculate the quantitative calculation of DNA-methylated lymphocytes &#40;MeTIL&#41; <a class="elsevierStyleCrossRef" href="#bib0022">&#91;22&#93;</a>&#44; ssGSEA is used to assess the infiltration of immune cells in the immune microenvironment of each sample&#44; and a heat map is used to display the results&#46; After purifying the expression profiles with ISOpureR <a class="elsevierStyleCrossRef" href="#bib0023">&#91;23&#93;</a>&#44; pRRophetic <a class="elsevierStyleCrossRef" href="#bib0024">&#91;24&#93;</a> was used to predict the drug sensitivity of cancer samples based on the cell line expression profiles of CCLE &#40;<a href="https://sites.broadinstitute.org/ccle">https&#58;&#47;&#47;sites&#46;broadinstitute&#46;org&#47;ccle</a>&#41; and the drug sensitivity data obtained from PRISM and CTRP&#46;</p></span><span id="sec0007" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2&#46;5</span><span class="elsevierStyleSectionTitle" id="cesectitle0015">Machine learning builds the best prognostic model</span><p id="para0012" class="elsevierStylePara elsevierViewall">By combining RSF&#44; Enet&#44; StepCox&#44; CoxBoost&#44; plsRcox&#44; superpc&#44; GBM&#44; survivalsvm&#44; Ridge&#44; and Lasso&#44; ten algorithms with variable screening and prognostic model construction&#44; we use TCGA-LIHC as the training set&#44; ICGC-LIRI And GSE14520 is the validation set&#44; use one algorithm for variable selection under the cross-validation framework and use another algorithm to build the prognosis model&#44; and calculate the consistency index &#40;C-index&#41; of the used model combination on the external data set&#44; and finally visualize the evaluation results of the model through the heat map&#44; and calculate the correlation between the prediction model and the FPI in each data set&#46;</p></span><span id="sec0008" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2&#46;6</span><span class="elsevierStyleSectionTitle" id="cesectitle0016">Pancancer analysis</span><p id="para0013" class="elsevierStylePara elsevierViewall">Immune infiltration&#58; Using Mcp Counter&#44; Quantiseq&#44; xCell&#44; EPIC&#44; and Cibersort&#44; we compute the immune cell infiltration information of each tumor and visualize the relationship with FPI using a heat map&#46; We calculated the relationship between FPI and DFI&#44; DSS&#44; OS&#44; and PFI in pan-cancer using KM analysis&#44; and the impact of FPI on OS in pan-cancer was determined using the univariate COX model&#46; Functional enrichment&#58; The samples were grouped according to the level of FPI&#44; and then we performed differential expression analysis among the groups&#44; and further used the results for GSEA enrichment analysis&#44; which can infer the different roles of FPI in different tumors&#46;</p></span><span id="sec0009" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2&#46;7</span><span class="elsevierStyleSectionTitle" id="cesectitle0017">Statistical analysis</span><p id="para0014" class="elsevierStylePara elsevierViewall">All bioinformatics analyzes were performed using R software &#40;v4&#46;1&#46;3&#41;&#46; Correlations were analyzed using Fisher&#39;s exact test &#40;for categorical data&#41; and Pearson&#39;s correlation coefficient &#40;for continuous variables&#41;&#46; Statistical significance was defined when the P value was less than 0&#46;05 &#40;<span class="elsevierStyleItalic">P</span> &#60; 0&#46;05&#41;&#46;</p></span><span id="sec0010" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">2&#46;8</span><span class="elsevierStyleSectionTitle" id="cesectitle0018">Ethical statements</span><p id="para0015" class="elsevierStylePara elsevierViewall">Since the data involved in this article are all from public databases&#44; there are no potential ethical issues with this article&#46;</p></span></span><span id="sec0011" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">3</span><span class="elsevierStyleSectionTitle" id="cesectitle0019">Results</span><span id="sec0012" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">3&#46;1</span><span class="elsevierStyleSectionTitle" id="cesectitle0020">Single-cell analysis</span><p id="para0016" class="elsevierStylePara elsevierViewall">In the single-cell data set GSE151530&#44; we identified nine different cell types based on the expression of different surface markers in different clusters&#44; namely T cell&#44; B cell&#44; monocyte&#44; macrophage&#44; NK cell&#44; hepatocyte&#44; endothelial cell&#44; epithelial cell&#44; and tissue stem cell &#40;<a class="elsevierStyleCrossRef" href="#fig0001">Fig&#46; 1</a>A&#41;&#46; The lower level of FA metabolism in the treated HCC sample &#40;HCC&#95;Treat&#41; &#40;<a class="elsevierStyleCrossRef" href="#fig0001">Fig&#46; 1</a>B&#41; suggests that the treatment process of HCC is also a process of escaping from the disorder of FA metabolism&#46; The FA metabolism levels of B cell&#44; endothelial cell&#44; monocyte&#44; and tissue stem cell FA metabolism levels decreased significantly after treatment&#44; while hepatocyte and epithelial cell FA metabolism levels increased significantly after treatment &#40;<a class="elsevierStyleCrossRef" href="#fig0001">Fig&#46; 1</a> D&#41;&#46; Regardless of whether received treatment&#44; HCC samples with a low FA metabolism had a higher level of malignancy and a higher probability of gene copy number variation &#40;<a class="elsevierStyleCrossRef" href="#fig0001">Fig&#46; 1</a>C&#41;&#46; By analyzing the difference between cells with different levels of FA metabolism &#40;<a class="elsevierStyleCrossRef" href="#fig0001">Fig&#46; 1</a>E&#41; and performing GSEA functional enrichment analysis&#44; we discovered that T cells were not enriched into meaningful pathways&#44; endothelial cells and tissue stem cells could only enrich individual pathways&#44; and FA metabolism has a greater effect on the life activities of epithelial cell&#44; B cell&#44; and hepatocyte cells &#40;<a class="elsevierStyleCrossRef" href="#sec0023">Supplementary Figure 1</a>&#41;&#46; We also discovered that differences in FA metabolism influence intercellular communication between different cells&#44; affecting not only the level of intercellular signaling factors but also the intensity and quantity of intercellular communication &#40;<a class="elsevierStyleCrossRef" href="#fig0002">Fig&#46; 2</a>A-D&#41;&#46;</p><elsevierMultimedia ident="fig0001"></elsevierMultimedia><elsevierMultimedia ident="fig0002"></elsevierMultimedia></span><span id="sec0013" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">3&#46;2</span><span class="elsevierStyleSectionTitle" id="cesectitle0021">Association analysis of FPI and clinicopathological data of TCGA-LIHC cohort</span><p id="para0017" class="elsevierStylePara elsevierViewall">The samples in the TCGA-LIHC cohort with an FPI greater than 0 were classified as belonging to the high FA metabolism group&#44; while the remaining samples were classified as belonging to the low FA metabolism group&#46; Through additional analysis of the clinicopathological data&#44; we determined that patients in the group with a high FA metabolism had a greater prevalence of cancer&#46; The low proportion of pathological stages &#40;AJCC-stage and T stage&#41;&#44; the age of diagnosis is also significantly older than the low FA metabolism group &#40;<a class="elsevierStyleCrossRef" href="#fig0003">Fig&#46; 3</a>A&#41;&#44; KM survival analysis also confirmed that patients with high FA metabolism level have a better prognosis &#40;<a class="elsevierStyleCrossRef" href="#fig0003">Fig&#46; 3</a>B&#41;&#44; and the KM survival analysis for each subgroup also supports this trend&#44; especially in younger than 60 years old or higher AJCC stage&#44; or higher T stage&#44; or Asian patients and male patients &#40;<a class="elsevierStyleCrossRef" href="#sec0023">Supplementary Figure 2</a>&#41;&#46; Concurrently&#44; we also analyzed the relationship between FPI and 13 cell death methods and the immunotherapy-related pathways&#46; We discovered that although FPI is weakly associated with the majority of cell death mechanisms&#44; it has a significant negative correlation with nearly all immunotherapy-regulated pathways&#46;</p><elsevierMultimedia ident="fig0003"></elsevierMultimedia></span><span id="sec0014" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">3&#46;3</span><span class="elsevierStyleSectionTitle" id="cesectitle0022">Effects of FPI on the immune microenvironment</span><p id="para0018" class="elsevierStylePara elsevierViewall">Through the analysis of the tumor immune microenvironment&#44; we also found that although FPI is weakly correlated with some common tumor scoring systems&#44; samples with low FA metabolism levels have higher expression on some common immune checkpoints&#44; such as CD274&#44; PDCD1&#44; CTLA4&#44; TNFRSF4&#44; etc&#46;&#44; echoing the previous conclusion that low FA metabolism level is associated with increased malignancy and a poor prognosis&#46; The level of FA metabolism was negatively correlated with T cell focal helper&#44; T cells CD4 memory activated&#44; and Eosinophils&#44; but clearly positively correlated with T cell gamma delta&#44; Plasma cells&#44; T cells CD4 memory resting&#44; NK cells resting&#44; Monocytes&#44; Mast cells resting&#44; and Endothelial cells &#40;<a class="elsevierStyleCrossRef" href="#fig0004">Fig&#46; 4</a>&#41;&#46;</p><elsevierMultimedia ident="fig0004"></elsevierMultimedia></span><span id="sec0015" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">3&#46;4</span><span class="elsevierStyleSectionTitle" id="cesectitle0023">Drug sensitivity and immunotherapy responsiveness</span><p id="para0019" class="elsevierStylePara elsevierViewall">After drug sensitivity prediction on the purified expression matrix&#44; we determined that the drugs with significant differences in sensitivity between the two groups at different levels of FA metabolism were betulinic acid&#44; SR1001&#44; BMS-195&#44;614&#44; GDC-0879&#44; procarbazine&#44; BMS-536&#44;924&#44; GANT-61 &#40;CTRP database&#41; &#40;<a class="elsevierStyleCrossRef" href="#fig0005">Fig&#46; 5</a>A&#44; B&#41;&#44; whereas data from PRISM indicated that the drugs with higher sensitivity differences were SKI-II&#44; 4&#8209;hydroxy-phenazone&#44; fleroxacin&#44; FR-139&#44;317 &#40;<a class="elsevierStyleCrossRef" href="#fig0005">Fig&#46; 5</a>C&#44; D&#41;&#46; We also investigated the relationship between FA metabolism and sorafenib sensitivity and found that the group of individuals with a high FA metabolizer rate had a higher sensitivity in both databases &#40;<a class="elsevierStyleCrossRef" href="#fig0005">Fig&#46; 5</a>E&#44; F&#41;&#46; To further investigate the association between FPI and immunotherapy responsiveness&#44; we analyzed GSE140901 and discovered that the high FA metabolism group had a better clinical benefit response and best response&#46; Similarly&#44; the PFS time and OS time of the low FA metabolism group were significantly shorter than those of the high FA metabolism group &#40;<a class="elsevierStyleCrossRef" href="#fig0006">Fig&#46; 6</a>&#41;&#46;</p><elsevierMultimedia ident="fig0005"></elsevierMultimedia><elsevierMultimedia ident="fig0006"></elsevierMultimedia></span><span id="sec0016" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">3&#46;5</span><span class="elsevierStyleSectionTitle" id="cesectitle0024">Functional enrichment and correlation of machine learning-based predictive models with FPI</span><p id="para0020" class="elsevierStylePara elsevierViewall">Utilizing functional enrichment analysis&#44; we were able to identify potential physiological processes involved in FA metabolism&#46; In the high FA metabolism group&#44; it primarily involves steroid metabolic process&#44; fat acid metabolic process&#44; and response to xenobiotic stimulation &#40;<a class="elsevierStyleCrossRef" href="#fig0007">Fig&#46; 7</a>A&#44; D&#41;&#44; whereas in the low FA metabolism group&#44; it primarily involves embryonic organ development&#44; pattern specification&#44; embryonic organ metamorphosis&#44; etc&#46; &#40;<a class="elsevierStyleCrossRef" href="#fig0007">Fig&#46; 7</a>B&#44; E&#41;&#46; Metabolism of Lipids&#44; Phase I Functionalization of Compounds&#44; Metapathway Biotransformation Phase I and II&#44; Retinol Metabolism&#44; Biological Oxidations&#44; etc&#46; were the majority of the pathways enriched by different genes between the two groups&#44; as determined by GSEA &#40;<a class="elsevierStyleCrossRef" href="#fig0007">Fig&#46; 7</a>C&#41;&#46; By combining ten machine learning algorithms pairwise&#44; we discovered that StepCox &#91;forward&#93;&#43;SuperPC has a higher C-index &#40;<a class="elsevierStyleCrossRef" href="#fig0008">Fig&#46; 8</a>A&#41; and can accurately predict the prognosis of patients in the TCGA-LIHC cohort&#44; ICGC-LIRI cohort&#44; and GSE14520 &#40;<a class="elsevierStyleCrossRef" href="#fig0008">Fig&#46; 8</a>B-D&#41;&#46; The correlation analysis demonstrates that in the aforementioned three cohorts&#44; FPI has a high correlation with the prediction model&#44; which may indicate that FPI is an excellent predictor of the prognosis of patients with HCC&#46;</p><elsevierMultimedia ident="fig0007"></elsevierMultimedia><elsevierMultimedia ident="fig0008"></elsevierMultimedia></span><span id="sec0017" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">3&#46;6</span><span class="elsevierStyleSectionTitle" id="cesectitle0025">Pan-cancer analysis</span><p id="para0021" class="elsevierStylePara elsevierViewall">To further investigate the mechanism of FA metabolism in tumors&#44; a pan-cancer analysis was conducted&#46; First&#44; we conducted pan-cancer immune infiltration studies and discovered that FPI and T cells CD4 memory activated&#44; Macrophages M0&#44; Macrophages M1&#44; Monocytes&#44; Mast cells resting&#44; T cells follicular helper have a relatively consistent correlation in the majority of tumors&#44; while the correlation with T cells regulatory &#40;Tregs&#41; showed heterogeneity among different cancers &#40;<a class="elsevierStyleCrossRef" href="#fig0009">Fig&#46; 9</a>A&#41;&#46; FPI demonstrates substantial heterogeneity for survival analysis&#44; and its analysis of cancer patient prognosis is constrained by the different types of cancer and cannot be applied to survival analysis for all cancers &#40;<a class="elsevierStyleCrossRef" href="#fig0009">Fig&#46; 9</a>B&#44; C&#41;&#46; Functional enrichment analysis revealed that Xenobiotic metabolism&#44; G2M checkpoint&#44; Epithelial-mesenchymal transition&#44; E2F targets&#44; Adipogenesis are involved in FA metabolism in pan-cancer&#44; indicating the similarity of FA metabolism in the regulation of cancer life activities&#46;</p><elsevierMultimedia ident="fig0009"></elsevierMultimedia></span></span><span id="sec0018" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">4</span><span class="elsevierStyleSectionTitle" id="cesectitle0026">Discussion</span><p id="para0022" class="elsevierStylePara elsevierViewall">FAs consist primarily of phospholipids&#44; sphingolipids&#44; triglycerides&#44; and other lipid components&#46; Multiple metabolic pathways can combine them into more complex lipids or convert them into phosphoglycerides <a class="elsevierStyleCrossRef" href="#bib0025">&#91;25&#93;</a>&#46; Consequently&#44; FAs can participate in the regulation of important physiological processes of cells via complex metabolic pathways&#46; For instance&#44; it can synthesize biofilm and regulate its fluidity&#44; act as a second messenger to transmit biological information and serve as a carrier to store energy <a class="elsevierStyleCrossRef" href="#bib0026">&#91;26&#93;</a>&#44; which can not only meet the physiological needs of normal cells but also play a significant role in the rapid proliferation of cancer &#91;<a class="elsevierStyleCrossRef" href="#bib0027">27</a>&#44;<a class="elsevierStyleCrossRef" href="#bib0028">28</a>&#93;&#46; Despite the fact that HCC is characterized by high malignancy&#44; high mortality&#44; and poor prognosis&#44; and that FA metabolism has been shown to play a significant role in the occurrence and development of HCC <a class="elsevierStyleCrossRef" href="#bib0029">&#91;29&#93;</a>&#44; previous studies have primarily focused on a single regulatory factor <a class="elsevierStyleCrossRefs" href="#bib0030">&#91;30&#8211;32&#93;</a>&#44; and its correlation with immunotherapy&#44; the immune microenvironment&#44; and drug sensitivity requires additional investigation&#46;</p><p id="para0023" class="elsevierStylePara elsevierViewall">We began by examining the relationship between FA metabolism and immunotherapy&#46; By analyzing single-cell data sets comprising immunotherapy-treated samples&#44; we discovered that HCC samples after treatment have lower FA levels&#44; which may indicate that the HCC&#39;s FA metabolism is returning to normal as treatment progresses&#46; In normal HCC&#44; however&#44; a decrease in FA metabolism frequently indicates an increase in malignancy&#46; Changes in FA metabolism will not only affect the level of intercellular communication in tumor tissue but will also play a different role in regulating the physiological activities of different cell types&#44; reflecting the heterogeneity of the tissue&#46;</p><p id="para0024" class="elsevierStylePara elsevierViewall">Patients in the high-FA metabolism group had a higher proportion of low-grade AJCC stage and T stage than those in the low-FA metabolism group&#44; as determined by a comprehensive analysis of the TCGA-LIHC cohort&#46; At the same time&#44; the patients in the group with a high FA metabolism had a later age at first diagnosis and a better prognosis across the board&#46; Although the level of FA metabolism is not strongly associated with the current common tumor scoring system&#44; it is significantly inversely associated with the expression level of immune checkpoints and the possible immunotherapy-related pathways&#46; Moreover&#44; for immune cells infiltrated by the immune microenvironment&#44; FA metabolism is associated with T cell follicular helper&#44; T cell CD4 memory activated&#44; Eosinophels&#44; T cell gamma delta&#44; Plasma cells&#44; T cells CD4 memory resting&#44; NK cells resting&#44; Monocytes&#44; Mast cells resting&#44; Endothelial cells&#44; with the majority of these correlations being positive&#46; As a widely used immunotherapy drug&#44; sorafenib has a greater sensitivity in the high FA metabolism group&#44; according to an analysis of drug sensitivity&#46; To validate our conclusion&#44; we also compiled and analyzed a GSE cohort with samples treated with PD-1&#47;PD-L1&#46; The results confirmed that patients with a high level of FA metabolism had a longer survival time and a better immunotherapy response&#44; as well as a significantly higher proportion of PR than those with a low level of FA metabolism&#46;</p><p id="para0025" class="elsevierStylePara elsevierViewall">Combining common machine learning algorithms yielded 101 predictive models&#44; from which we selected the model with the highest C-index and examined its correlation with FA metabolism&#46; The results revealed a high correlation between the TCGA-LIHC cohort&#44; the ICGC-LIRI cohort&#44; and the GSE14520 cohort&#44; confirming the aforementioned findings&#46; The role of FA metabolism in pan-cancer was also investigated&#46; Although tumor types varied&#44; the correlation between T cells CD4 memory activated&#44; Macrophages M0&#44; Macrophages M1&#44; Monocytes&#44; Mast cells resting&#44; T cells follicular helper and FA metabolism was significantly similar among different tumors&#46; Although FA metabolism cannot be used as a universal prognostic indicator for all cancers&#44; it has a consistent impact on the prognosis of some cancers&#46; In different cancers&#44; the regulation of FA metabolism on Xenobiotic metabolism&#44; G2M checkpoint&#44; Epithelial-mesenchymal transition&#44; E2F targets&#44; Adipogenesis reflects the similarities among different cancers&#46;</p><p id="para0026" class="elsevierStylePara elsevierViewall">Our research is somewhat innovative&#46; We designed a FPI to study FA metabolism as a whole&#44; and combined single-cell data with bulk analysis to evaluate the correlation between FA metabolism and clinicopathological data&#44; immunotherapy&#44; and drug sensitivity&#46; On the other hand&#44; there are some restrictions&#46; For instance&#44; our analysis is based on public data&#44; and additional patient data must be gathered by multiple centers for the results to be more convincing&#46; Second&#44; additional experiments are required to confirm the association between FA metabolism and immune infiltration and immunotherapy responsiveness&#46; Lastly&#44; <span class="elsevierStyleItalic">in vivo</span> and <span class="elsevierStyleItalic">in vitro</span> experiments are required to further elucidate this mechanism&#39;s specific workings&#46;</p></span><span id="sec0019" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleLabel">5</span><span class="elsevierStyleSectionTitle" id="cesectitle0027">Conclusions</span><p id="para0027" class="elsevierStylePara elsevierViewall">By combining the analysis of single-cell and bulk-seq data&#44; we developed a FA metabolism prediction index that can accurately predict the prognosis of HCC patients and is closely related to its pathological stage&#46; The relationship between this index and the immune microenvironment&#44; drug sensitivity&#44; and immunotherapy responsiveness in HCC patients was also investigated&#46; Our research provides new theoretical evidence for a deeper understanding of the metabolic disorder in HCC&#44; which will help HCC patients in achieving better clinical outcomes&#46; Obviously&#44; the study requires additional laboratory evidence to be more convincing&#46;</p></span><span id="sec0020" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0028">Funding</span><p id="para0031" class="elsevierStylePara elsevierViewall">This research did not receive any specific grant from funding agencies in the public&#44; commercial&#44; or not-for-profit sectors&#46;</p></span><span id="sec0021" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0029">Author contributions</span><p id="para0032" class="elsevierStylePara elsevierViewall">Jinhuan Wang is responsible for the acquisition of data&#44; analysis and interpretation of data&#44; and drafting of the manuscript&#59; Xinmin Jin is responsible for study concept and design&#44; acquisition of data&#44; and critical revision of the manuscript for important intellectual content&#46;</p></span><span id="sec0022" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0030">Data availability statement</span><p id="para0033" class="elsevierStylePara elsevierViewall">The original contributions presented in the study are included in the article&#46; Further inquiries can be directed to the corresponding author&#46;</p></span></span>"
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              "titulo" => "Functional enrichment and correlation of machine learning-based predictive models with FPI"
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Article information
ISSN: 16652681
Original language: English
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es en pt

¿Es usted profesional sanitario apto para prescribir o dispensar medicamentos?

Are you a health professional able to prescribe or dispense drugs?

Você é um profissional de saúde habilitado a prescrever ou dispensar medicamentos