scholarly journals The CXCL Family Contributes to Immunosuppressive Microenvironment in Gliomas and Assists in Gliomas Chemotherapy

2021 ◽  
Vol 12 ◽  
Author(s):  
Zeyu Wang ◽  
Yuze Liu ◽  
Yuyao Mo ◽  
Hao Zhang ◽  
Ziyu Dai ◽  
...  

Gliomas are a type of malignant central nervous system tumor with poor prognosis. Molecular biomarkers of gliomas can predict glioma patient’s clinical outcome, but their limitations are also emerging. C-X-C motif chemokine ligand family plays a critical role in shaping tumor immune landscape and modulating tumor progression, but its role in gliomas is elusive. In this work, samples of TCGA were treated as the training cohort, and as for validation cohort, two CGGA datasets, four datasets from GEO database, and our own clinical samples were enrolled. Consensus clustering analysis was first introduced to classify samples based on CXCL expression profile, and the support vector machine was applied to construct the cluster model in validation cohort based on training cohort. Next, the elastic net analysis was applied to calculate the risk score of each sample based on CXCL expression. High-risk samples associated with more malignant clinical features, worse survival outcome, and more complicated immune landscape than low-risk samples. Besides, higher immune checkpoint gene expression was also noticed in high-risk samples, suggesting CXCL may participate in tumor evasion from immune surveillance. Notably, high-risk samples also manifested higher chemotherapy resistance than low-risk samples. Therefore, we predicted potential compounds that target high-risk samples. Two novel drugs, LCL-161 and ADZ5582, were firstly identified as gliomas’ potential compounds, and five compounds from PubChem database were filtered out. Taken together, we constructed a prognostic model based on CXCL expression, and predicted that CXCL may affect tumor progression by modulating tumor immune landscape and tumor immune escape. Novel potential compounds were also proposed, which may improve malignant glioma prognosis.

2020 ◽  
Author(s):  
Qinqin Liu ◽  
Jing Li ◽  
Fei Liu ◽  
Weilin Yang ◽  
Jingjing Ding ◽  
...  

Abstract Background Hepatocellular carcinoma (HCC) is associated with dismal prognosis, and prediction of the prognosis of HCC can assist the therapeutic decisions. More and more studies showed that the texture parameters of images can reflect the heterogeneity of the tumor, and may have the potential to predict the prognosis of patients with HCC after surgical resection. The aim of the study was to investigate the prognostic value of computed tomography (CT) texture parameters for patients with HCC after hepatectomy, and try to develop a radiomics nomograms by combining clinicopathological factors with radiomics signature.Methods 544 eligible patients were enrolled in the retrospective study and randomly divided into training cohort (n=381) and validation cohort (n=163). The regions of interest (ROIs) of tumor is delineated, then the corresponding texture parameters are extracted. The texture parameters were selected by using the least absolute shrinkage and selection operator (LASSO) Cox model in training cohort, and the radiomics score (Rad-score) was generated. According to the cut-off value of the Rad-score calculated by the receiver operating characteristic (ROC) curve, the patients were divided into high-risk group and low-risk group. The prognosis of the two groups was compared and validated in the validation cohort. Univariate and multivariable analyses by COX proportional hazard regression model were used to select the prognostic factors of overall survival (OS). The radiomics nomogram for OS were established based on the radiomics signature and clinicopathological factors. The Concordance index (C-index), calibration plot and decision curve analysis (DCA) were used to evaluate the performance of the radiomics nomogram.Result 7 texture parameters associated with OS were selected in the training, and the radiomics signature was formulated based on the texture parameters. The patients were divided into high-risk group and low-risk group by the cut-off values of the Rad-score of OS. The 1-, 3- and 5-year OS rate was 71.0%, 45.5% and 35.5% in the high-risk group, respectively, and 91.7%, 82.1% and 78.7%, in the low-risk group, respectively, with significant difference (P <0.001). COX regression model found that Rad-score was an independent prognostic factor of OS. In addition, the radiomics nomogram was developed based on five variables: α‐fetoprotein (AFP), platelet lymphocyte ratio (PLR), largest tumor size, microvascular invasion (MVI) and Rad-score. The nomograms displayed good accuracy in predicting OS (C-index=0.747) in the training cohort and was confirmed in the validation cohort (C-index=0.777). The calibration plots also showed an excellent agreement between the actual and predicted survival probabilities. The DAC indicated that the radiomics nomogram showed better clinical usefulness than the clinicopathologic nomogram.Conclusion The radiomics signature is potential biomarkers of the prognosis of HCC after hepatectomy. Radiomics nomogram that integrated radiomics signature can provide more accurate estimate of OS for patients with HCC after hepatectomy.


2021 ◽  
Vol 11 ◽  
Author(s):  
Qianwen Cheng ◽  
Li Cai ◽  
Yuyang Zhang ◽  
Lei Chen ◽  
Yu Hu ◽  
...  

Background: To investigate the prognostic value of circulating plasma cells (CPC) and establish novel nomograms to predict individual progression-free survival (PFS) as well as overall survival (OS) of patients with newly diagnosed multiple myeloma (NDMM).Methods: One hundred ninetyone NDMM patients in Wuhan Union Hospital from 2017.10 to 2020.8 were included in the study. The entire cohort was randomly divided into a training (n = 130) and a validation cohort (n = 61). Univariate and multivariate analyses were performed on the training cohort to establish nomograms for the prediction of survival outcomes, and the nomograms were validated by calibration curves.Results: When the cut-off value was 0.038%, CPC could well distinguish patients with higher tumor burden and lower response rates (P &lt; 0.05), and could be used as an independent predictor of PFS and OS. Nomograms predicting PFS and OS were developed according to CPC, lactate dehydrogenase (LDH) and creatinine. The C-index and the area under receiver operating characteristic curves (AUC) of the nomograms showed excellent individually predictive effects in training cohort, validation cohort or entire cohort. Patients with total points of the nomograms ≤ 60.7 for PFS and 75.8 for OS could be defined as low-risk group and the remaining as high-risk group. The 2-year PFS and OS rates of patients in low-risk group was significantly higher than those in high-risk group (p &lt; 0.001).Conclusions: CPC is an independent prognostic factor for NDMM patients. The proposed nomograms could provide individualized PFS and OS prediction and risk stratification.


2021 ◽  
Vol 8 ◽  
Author(s):  
Xiwen Wu ◽  
Tian Lan ◽  
Muqi Li ◽  
Junfeng Liu ◽  
Xukun Wu ◽  
...  

Background: Hepatocellular carcinoma (HCC) is one of the most common aggressive solid malignant tumors and current research regards HCC as a type of metabolic disease. This study aims to establish a metabolism-related mRNA signature model for risk assessment and prognosis prediction in HCC patients.Methods: HCC data were obtained from The Cancer Genome Atlas (TCGA), International Cancer Genome Consortium (ICGC) and Gene Enrichment Analysis (GSEA) website. Least absolute shrinkage and selection operator (LASSO) was used to screen out the candidate mRNAs and calculate the risk coefficient to establish the prognosis model. A high-risk group and low-risk group were separated for further study depending on their median risk score. The reliability of the prediction was evaluated in the validation cohort and the whole cohort.Results: A total of 548 differential mRNAs were identified from HCC samples (n = 374) and normal controls (n = 50), 45 of which were correlated with prognosis. A total of 373 samples met the screening criteria and there were randomly divided into the training cohort (n = 186) and the validation cohort (n = 187). In the training cohort, six metabolism-related mRNAs were used to construct a prognostic model with a LASSO regression model. Based on the risk model, the overall survival rate of the high-risk cohort was significantly lower than that of the low-risk cohort. The results of a time-ROC curve proved that the risk score (AUC = 0.849) had a higher prognostic value than the pathological grade, clinical stage, age or gender.Conclusion: The model constructed by the six metabolism-related mRNAs has a significant value for survival prediction and can be applied to guide the evaluation of HCC and the designation of clinical therapy.


2021 ◽  
Author(s):  
Guode Li ◽  
linsen Jiang ◽  
Jiangpeng Li ◽  
huaying shen ◽  
Shan Jiang ◽  
...  

Abstract Background The all-cause mortality in hemodialysis(HD) patients is higher than in the general population and the first 6 months after initiating dialysis is an important transitional period for new HD patients. The aim of this study was to develop and validate a nomogram for predicting the 6-month survival rate among HD patients. Methods We developed a prediction model based on a training cohort of 679 HD patients. Multivariate Cox regression analyses were performed to identify predictive factors, followed by establishment of a nomogram. Next, performance of the nomogram was assessed using the C-index and calibration plots. The nomogram was validated through applying discrimination and calibration to an additional cohort of 173 HD patients. Results During a follow-up period of six months, there were 47 and 12 deaths in the training cohort and validation cohort, respectively, with a mortality rate of 7.3% and 6.9%, respectively. The score included five commonly available predictors: age, temporary dialysis catheter, intradialytic hypotension, use of ACEi or ARB, and use of loop diuretics. The score revealed good discrimination in the training cohort [C-index 0.775(0.693-0.857)] and validation cohort [C-index 0.758(0.677-0.836)], whereas the calibration plots showed good calibration, indicating suitable performance of the nomogram model. The total score point was then divided into two risk classifications: low risk (0-90 points) and high risk (≥ 91 points). Results showed that all-cause mortality was significantly different in HD patients in the high-risk group compared to the low-risk group. Conclusions This nomogram can accurately predict the 6-month survival rate for HD patients, and thus it can be used in clinical decision-making.


Blood ◽  
2018 ◽  
Vol 132 (Supplement 1) ◽  
pp. 357-357
Author(s):  
Hao Dai ◽  
Sivaramakrishna P. Rachakonda ◽  
Olaf Penack ◽  
Aleksandar Radujkovic ◽  
Carsten Müller-Tidow ◽  
...  

Abstract Introduction Severe chronic graft-versus-host disease (cGVHD) is the leading cause of morbidity and mortality in long-term survivors after allogeneic stem cell transplantation (alloSCT). The CXCR3 signalling pathway may be implicated in cGVHD pathophysiology, since CXCR3 and its ligands (CXCL4, CXCL9, CXCL10 and CXCL11) are involved in attracting activated Th1 cells into inflamed tissues. To better understand the role of the CXCR3 axis in cGVHD, we measured serum levels of CXCR3 ligands in allograft recipients pre-transplant and on day 28 post-transplant, and correlated them to the single nucleotide polymorphisms (SNPs) in recipient CXCR3/CXCR3L genes in the context of severe cGVHD. Patients and methods: 287 patients who were allografted at Heidelberg University Hospital, survived more than 6 months after alloSCT, and did not receive statin-based endothelial prophylaxis (SEP) constituted the no-SEP training cohort, whereas 401 patients who received SEP constituted the SEP cohort. DNA for genotyping was available for 545 patients (no-SEP 242, SEP 303) and sera for measuring CXCL9, CXCL10 and CXCL11 by ELISA were collected at pre-transplant for 405 patients (no-SEP 109, SEP 296) and at day +28 for 494 patients (no-SEP 152, SEP 342). The no-SEP validation cohort consisted of 202 patients who had been allografted at Berlin Charité and survived more than 6 months. CGVHD was diagnosed and graded using the National Institutes of Health's 2005 consensus criteria. Eighteen SNPs (7 in CXCL9-11, 7 in CXCL4 and 4 in CXCR3 loci) were selected and analyzed for association with severe cGVHD, treating non-relapse death and relapse without severe cGVHD as competing events. Associations of SNPs with serum chemokine levels were studied by Mann-Whitney U-test. Hazard ratios (HR) with 95% confidence interval (CI) were estimated using (cause-specific) Cox regression. Covariates considered in multivariate analysis were age, diagnosis, donor type, sex of donor and recipient and usage of ATG. Results: Overall, 50 of 287 patients (17.4%) in the no-SEP training cohort, 53 of 401 patients (13.2%) in the SEP cohort and 48 of 202 patients (23.8%) in the no-SEP validation cohort developed at least one episode of severe cGVHD. In the no-SEP training cohort, higher serum CXCL9 levels at day +28 were significantly associated with a higher risk of severe cGVHD in univariate analysis (HR 1.38 for every log2-fold change, 95% CI 1.10-1.75, P=0.01; Figure 1a). No significant association was found for serum CXCL10 and CXCL11 pre- or post-transplant with severe cGVHD. The rs884304 SNP in CXCL9-11 locus showed a significant association with severe cGVHD; patients with AA/AG genotypes carried a HR of 2.32 (95%CI 1.21-4.46, P=0.01) compared to patients with GG genotypes. In addition, 3 other SNPs (rs3733236 and rs4282209 in CXCL9-11, rs655328 in CXCL4 loci) were selected based on the effect on severe cGVHD (P <0.10) to calculate a combined genetic risk score. Patients with any low-risk genotypes (rs884304GG, rs3733236AA/AG, rs4282209AA/AG and rs655328TT) were classified as the low-risk. All others were considered as high-risk. Taken together, high-risk patients were found in 21.4% (52/242) of the no-SEP training cohort, 22.4% (68/303) of the SEP cohort and 19.8% (40/202) of the no-SEP validation cohort. Patients in the high-risk group had significantly higher serum CXCL9 levels at day +28 (Figure 1b) and a significantly higher risk of severe cGVHD (Figure 1c) on both univariate (HR 2.68, 95%CI 1.45-4.95, P=0.001) and multivariate analyses (HR 2.49, 95%CI 1.33-4.66, P=0.004). The effect of the combined score was confirmed in the no-SEP validation cohort (HR 3.02, 95%CI 1.60-5.72, P=0.001). In contrast, in the SEP cohort the adverse effect of high risk genotypes was not observed (HR 1.30, 95% CI 0.60-2.79, P=0.50). In addition, SEP reduced day +28 CXCL9 levels in patients with high-risk genotype but not in low-risk patients. Conclusion: In the absence of SEP, the risk of severe cGVHD could be predicted both by a genetic score of 4 SNPs in recipient CXCR3L genes and by serum CXCL9 levels at day +28. The genetic score influenced serum CXCL9 levels at day +28. Our results suggest that in high-risk patients, host-derived CXCR3 ligands are upregulated early after alloSCT and may promote the development of severe cGVHD. Endothelial prophylaxis may reduce the risk of severe cGVHD by regulating serum CXCL9 levels and, thus, warrants further study. Disclosures No relevant conflicts of interest to declare.


PeerJ ◽  
2021 ◽  
Vol 9 ◽  
pp. e11599
Author(s):  
Zhihui Chen ◽  
Xinyu Wang ◽  
Guozhu Wang ◽  
Bin Xiao ◽  
Zhe Ma ◽  
...  

Background Long non-coding RNAs (lncRNAs) are a class of non-coding RNAs with unique characteristics. These RNA can regulate cancer cells’ survival, proliferation, invasion, metastasis, and angiogenesis and are potential diagnostic and prognostic markers. We identified a seven-lncRNA signature related to the overall survival (OS) of patients with Ewing’s sarcoma (EWS). Methods We used an expression profile from the Gene Expression Omnibus (GEO) database as a training cohort to screen out the OS-associated lncRNAs in EWS and further established a seven-lncRNA signature using univariate Cox regression, the least absolute shrinkage, and selection operator (LASSO) regression analysis. The prognostic lncRNA signature was validated in an external dataset from the International Cancer Genome Consortium (ICGC) as a validation cohort. Results We obtained 10 survival-related lncRNAs from the Kaplan-Meier and ROC curve analysis (log-rank test P < 0.05; AUC >0.6). Univariate Cox regression and LASSO regression analyses confirmed seven key lncRNAs and we established a lncRNA signature to predict an EWS prognosis. EWS patients in the training cohort were categorized into a low-risk group or a high-risk group based on their median risk score. The high-risk group’s survival time was significantly shorter than the low-risk group’s. This seven-lncRNA signature was further confirmed by the validation cohort. The area under the curve (AUC) for this lncRNA signature was up to 0.905 in the training group and 0.697 in the 3-year validation group. The nomogram’s calibration curves demonstrated that EWS probability in the two cohorts was consistent between the nomogram prediction and actual observation. Conclusion We screened a seven-lncRNA signature to predict the EWS patients’ prognosis. Our findings provide a new reference for the current prognostic evaluation of EWS and new direction for the diagnosis and treatment of EWS.


2021 ◽  
Vol 11 ◽  
Author(s):  
Li-Xin Wu ◽  
Hao Jiang ◽  
Ying-Jun Chang ◽  
Ya-Lan Zhou ◽  
Jing Wang ◽  
...  

BackgroundApproximately 30% of Chinese individuals with cytogenetically normal acute myeloid leukemia (CN-AML) have biallelic CEBPA (biCEBPA) mutations. The prognosis and optimal therapy for these patients are controversial in clinical practice.MethodsIn this study, we performed targeted region sequencing of 236 genes in 158 individuals with this genotype and constructed a nomogram model based on leukemia-free survival (LFS). Patients were randomly assigned to a training cohort (N =111) and a validation cohort (N =47) at a ratio of 7:3. Risk stratification was performed by the prognostic factors to investigate the risk-adapted post-remission therapy by Kaplan–Meier method.ResultsAt least 1 mutated gene other than CEBPA was identified in patients and mutation number was associated with LFS (61.6% vs. 39.0%, P =0.033), survival (85.6% vs. 62.9%, P =0.030) and cumulative incidence of relapse (CIR) (38.4% vs. 59.5%, P =0.0496). White blood cell count, mutations in CFS3R, KMT2A and DNA methylation related genes were weighted to construct a nomogram model and differentiate two risk subgroups. Regarding LFS, low-risk patients were superior to the high-risk (89.3% vs. 33.8%, P &lt;0.001 in training cohort; 87.5% vs. 18.2%, P =0.009 in validation cohort). Compared with chemotherapy, allogenic hematopoietic stem cell transplantation (allo-HSCT) improved 5-year LFS (89.6% vs. 32.6%, P &lt;0.001), survival (96.9% vs. 63.6%, P =0.001) and CIR (7.2% vs. 65.8%, P &lt;0.001) in high-risk patients but not low-risk patients (LFS, 77.4% vs. 88.9%, P =0.424; survival, 83.9% vs. 95.5%, P =0.173; CIR, 11.7% vs. 11.1%, P =0.901).ConclusionsOur study indicated that biCEBPA mutant-positive CN-AML patients could be further classified into two risk subgroups by four factors and allo-HSCT should be recommended for high-risk patients as post-remission therapy. These data will help physicians refine treatment decision-making in biCEBPA mutant-positive CN-AML patients.


2021 ◽  
Vol 39 (15_suppl) ◽  
pp. e15565-e15565
Author(s):  
Qiqi Zhu ◽  
Du Cai ◽  
Wei Wang ◽  
Min-Er Zhong ◽  
Dejun Fan ◽  
...  

e15565 Background: Few robust predictive biomarkers have been applied in clinical practice due to the heterogeneity of metastatic colorectal cancer (mCRC) . Using the gene pair method, the absolute expression value of genes can be converted into the relative order of genes, which can minimize the influence of the sequencing platform difference and batch effects, and improve the robustness of the model. The main objective of this study was to establish an immune-related gene pairs signature (IRGPs) and evaluate the impact of the IRGPs in predicting the prognosis in mCRC. Methods: A total of 205 mCRC patients containing overall survival (OS) information from the training cohort ( n = 119) and validation cohort ( n = 86) were enrolled in this study. LASSO algorithm was used to select prognosis related gene pairs. Univariate and multivariate analyses were used to validate the prognostic value of the IRGPs. Gene sets enrichment analysis (GSEA) and immune infiltration analysis were used to explore the underlying biological mechanism. Results: An IRGPs signature containing 22 gene pairs was constructed, which could significantly separate patients of the training cohort ( n = 119) and validation cohort ( n = 86) into the low-risk and high-risk group with different outcomes. Multivariate analysis with clinical factors confirmed the independent prognostic value of IRGPs that higher IRGPs was associated with worse prognosis (training cohort: hazard ratio (HR) = 10.54[4.99-22.32], P < 0.001; validation cohort: HR = 3.53[1.24-10.08], P = 0.012). GSEA showed that several metastasis and immune-related pathway including angiogenesis, TGF-β-signaling, epithelial-mesenchymal transition and inflammatory response were enriched in the high-risk group. Through further analysis of the immune factors, we found that the proportions of CD4+ memory T cell, regulatory T cell, and Myeloid dendritic cell were significantly higher in the low-risk group, while the infiltrations of the Macrophage (M0) and Neutrophil were significantly higher in the high-risk group. Conclusions: The IRGPs signature could predict the prognosis of mCRC patients. Further prospective validations are needed to confirm the clinical utility of IRGPs in the treatment decision.


2021 ◽  
Author(s):  
Alberto Gerri ◽  
Ahmed Shokry ◽  
Enrico Zio ◽  
Marco Montini

Abstract Hydrates formation in subsea pipelines is one of the main reliability concerns for flow assurance engineers. A fast and reliable assessment of the Cool-Down Time (CDT), the period between a shut-down event and possible hydrates formation in the asset, is of key importance for the safety of operations. Existing methods for the CDT prediction are highly dependent on the use of very complex physics-based models that demand large computational time, which hinders their usage in an online environment. Therefore, this work presents a novel methodology for the development of surrogate models that predict, in a fast and accurate way, the CDT in subsea pipelines after unplanned shutdowns. The proposed methodology is, innovatively, tailored on the basis of reliability perspective, by treating the CDT as a risk index, where a critic CDT threshold (i.e. the minimum time needed by the operator to preserve the line from hydrates formation) is considered to distinguish the simulation outputs into high-risk and low-risk domains. The methodology relies on the development of a hybrid Machine Learning (ML) based model using datasets generated through complex physics-based model’ simulations. The hybrid ML-based model consists of a Support Vector Machine (SVM) classifier that assigns a risk level (high or low) to the measured operating condition of the asset, and two Artificial Neural Networks (ANNs) for predicting the CDT at the high-risk (low CDT) or the low-risk (high CDT) operating conditions previously assigned by the classifier. The effectiveness of the proposed methodology is validated by its application to a case study involving a pipeline in an offshore western African asset, modelled by a transient physics-based commercial software. The results show outperformance of the capabilities of the proposed hybrid ML-based model (i.e., SVM + 2 ANNs) compared to the classical approach (i.e. modelling the entire system with one global ANN) in terms of enhancing the prediction of the CDT during the high-risk conditions of the asset. This behaviour is confirmed applying the novel methodology to training datasets of different size. In fact, the high-risk Normalized Root Mean Square Error (NRMSE) is reduced on average of 15% compared to the NRMSE of a global ANN model. Moreover, it’s shown that high-risk CDT are better predicted by the hybrid model even if the critic CDT, which divides the simulation outputs in high-risk and low-risk values (i.e. the minimum time needed by the operator to preserve the line from hydrates formation), changes. The enhancement, in this case, is on average of 14.6%. Eventually, results show how the novel methodology cuts down by more than one hundred seventy-eight times the computational times for online CDT predictions compared to the physics-based model.


Blood ◽  
2018 ◽  
Vol 132 (Supplement 1) ◽  
pp. 68-68
Author(s):  
Yasuyuki Arai ◽  
Tadakazu Kondo ◽  
Kyoko Fuse ◽  
Yasuhiko Shibasaki ◽  
Masayoshi Masuko ◽  
...  

Abstract Background Acute graft-versus-host disease (aGVHD) is one of the critical complications following allogeneic hematopoietic stem cell transplantation (HSCT). Thus far, various types of prediction scores have been invented using statistical maneuvers, such as multivariate analyses. Recent progress in the field of machine learning algorithms, which are part of a data mining approach, suggested the application of this technique for the establishment of a novel GVHD risk prediction index using pre-HSCT parameters. The primary objective of this study was to establish and validate such index for aGVHD (grades 2-4 and 3-4). Methods This study was a database dependent retrospective cohort study analyzing the data of adult recipients of HSCT obtained from the registry of Japanese Society for Hematopoietic Cell Transplantation. Pre-HSCT parameters, such as those for patients, donors, conditioning regimens, and other procedures were retrieved from the database and introduced into the data mining approach. The alternating decision tree (ADTree) machine learning algorithm was applied to develop a model. This cohort was randomly divided into the training cohort (70% of the entire dataset) and the validation cohort (the remaining 30%). The algorithm was trained and tested using a 10-fold cross validation on the training cohort. The ADTree was validated in the validation cohort using the competitive risk hazard model. Results In total, 26,695 patients transplanted from allogeneic donors since 1992 to 2016 were included in this study. More than half of the patients were treated for acute myeloid leukemia or myelodysplastic syndrome (50.9%), followed by acute lymphoblastic leukemia (19.2%) and non-Hodgkin lymphoma (8.3%). The cumulative incidence of grades 2-4 and 3-4 aGVHD was 42.8% (95% confident interval [CI], 42.2 - 43.4%) and 17.1% (95%CI, 16.6 - 17.5%), respectively. Predictive ADTree models were established using the training cohort (N = 17,244). Out of >30 variables considered, 15 variables, such as underlying disease, donor source, HLA and sex mismatch, conditioning regimen, GVHD prophylaxis, and donor age, were adapted into each model for aGVHD prediction (Figure 1). Cross validation demonstrated that the models' discrimination for the incidence of aGVHD was appropriate (area under curve: 0.616 and 0.623 for grades 2-4 and 3-4, respectively). These models were tested in the validation cohort (N = 8,050), and the incidence of aGVHD was clearly stratified according to the categorized ADTree scores (Figure 2). The cumulative incidence of grade 2-4 aGVHD was 29.0% for low risk, 35.3% for low-intermediate risk (hazard ratio [HR] compared with the low risk, 1.26; 95%CI, 1.11 - 1.42), 41.8% for intermediate risk (HR, 1.56; 95%CI, 1.39 - 1.76), 48.7% for high-intermediate risk (HR, 2.00; 95%CI, 1.78 - 2.24), and 58.7% for high risk (HR, 2.57; 95%CI, 2.30 - 2.88). Whereas, the cumulative incidence of grade 3-4 aGVHD was 8.6% for low risk, 12.5% for low-intermediate risk (HR, 1.53; 95%CI, 1.20 - 1.93), 14.9% for intermediate risk (HR, 1.85; 95%CI, 1.48 - 2.31), 21.1% for high-intermediate risk (HR, 2.72; 95%CI, 2.19 - 3.38), and 28.6% for high risk (HR, 3.87; 95%CI, 3.13 - 4.78). These two scores for aGVHD also demonstrated the relationship with the inferior overall survival after HSCT. Discussion Variables automatically extracted through machine learning algorithms (i.e., ADTree), in the absence of any bias from researchers, were clinically reasonable, and the obtained systems provided robust risk stratification scores for the incidence of aGVHD following allogeneic HSCT. The high reproducibility and freedom from the interactions among the variables indicate that ADTree, along with the other data mining approaches, may be widely used in the establishment of risk score. The present results should be validated in the other patient cohorts through future studies worldwide. Disclosures Ichinohe: Nippon Shinyaku Co.: Research Funding; Ono Pharmaceutical Co.: Research Funding; Otsuka Pharmaceutical Co.: Research Funding; Repertoire Genesis Inc.: Research Funding; MSD: Research Funding; Pfizer: Research Funding; JCR Pharmaceuticals: Honoraria; Celgene: Honoraria; Takeda Pharmaceutical Co.: Research Funding; Zenyaku Kogyo Co.: Research Funding; Sumitomo Dainippon Pharma Co.: Research Funding; Taiho Pharmaceutical Co.: Research Funding; Alexion Pharmaceuticals: Honoraria; Bristol-Myers Squibb: Honoraria; Janssen Pharmaceutical K.K.: Honoraria; Mundipharma: Honoraria; Novartis.: Honoraria; Kyowa Hakko Kirin Co.: Research Funding; Eisai Co.: Research Funding; CSL Behring: Research Funding; Chugai Pharmaceutical Co.: Research Funding; Astellas Pharma: Research Funding. Kanda:Eisai: Consultancy, Honoraria, Research Funding; Otsuka: Research Funding; Asahi-Kasei: Research Funding; Pfizer: Research Funding; Taisho-Toyama: Research Funding; Shionogi: Consultancy, Honoraria, Research Funding; Nippon-Shinyaku: Research Funding; Tanabe-Mitsubishi: Research Funding; Sanofi: Research Funding; Takeda: Consultancy, Honoraria, Research Funding; Bristol-Myers Squibb: Consultancy, Honoraria; MSD: Research Funding; Ono: Consultancy, Honoraria, Research Funding; CSL Behring: Research Funding; Dainippon-Sumitomo: Consultancy, Honoraria, Research Funding; Taiho: Research Funding; Kyowa-Hakko Kirin: Consultancy, Honoraria, Research Funding; Chugai: Consultancy, Honoraria, Research Funding; Astellas: Consultancy, Honoraria, Research Funding; Novartis: Research Funding; Celgene: Consultancy, Honoraria; Mochida: Consultancy, Honoraria; Alexion: Consultancy, Honoraria; Takara-bio: Consultancy, Honoraria.


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