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Background And Aims: Identifying potential high-risk groups of oxaliplatin-induced liver injury (OILI) is valuable, but tools are lacking. So artificial neural network (ANN) and logistic regression (LR) models will be developed to predict the risk of OILI.
Methods: The medical information of patients treated with oxaliplatin between May and November 2016 at 10 hospitals was collected prospectively. We used the updated Roussel Uclaf causality assessment method (RUCAM) to identify cases of OILI and summarized the patient and medication characteristics. Furthermore, the ANN and LR models for predicting the risk of OILI were developed and evaluated.
Results: The incidence of OILI was 3.65%. The median RUCAM score with interquartile range was 6 (4, 9). The ANN model performed similarly to the LR model in sensitivity, specificity, and accuracy. In discrimination, the area under the curve of the ANN model was larger (0.920>0.833, =0.019). In calibration, the ANN model was slightly improved. The important predictors of both models overlapped partially, including age, chemotherapy regimens and cycles, single and total dose of OXA, glucocorticoid drugs, and antihistamine drugs.
Conclusions: When the discriminative and calibration ability was given priority, the ANN model outperformed the LR model in predicting the risk of OILI. Other chemotherapy drugs in oxaliplatin-based chemotherapy regimens could have different degrees of impact on OILI. We suspected that OILI may be idiosyncratic, and chemotherapy dose factors may be weakly correlated. Decision making on prophylactic medications needs to be carefully considered, and the actual preventive effect needed to be supported by more evidence.
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http://dx.doi.org/10.14218/JCTH.2023.00399 | DOI Listing |
Front Vet Sci
August 2025
Faculty of Fisheries, Recep Tayyip Erdogan University, Rize, Türkiye.
Application of anesthetic chemicals in aquaculture is important to minimize stress under normal operations such as handling, transport, and artificial breeding. In the past decade, the preference for natural anesthetics over synthetic ones has increased due to welfare issues regarding fish welfare and food safety. This study investigates the anesthetic efficacy of nutmeg oil () in three freshwater fish species- (Common carp), (Danube sturgeon), and (Rainbow trout)-by modeling behavioral (Induction and recovery times) and hematological responses using artificial neural networks (ANNs).
View Article and Find Full Text PDFAnn Bot
September 2025
Laboratório de Fisiologia Ecológica de Plantas, Departamento de Botânica, Instituto de Biociências, Universidade de São Paulo, Brasil.
Background And Aims: Aerenchyma formation has emerged as a promising model for understanding cell wall modifications. Certain cells undergo programmed cell death (PCD), while others do not, suggesting the existence of a tightly regulated signaling dispersion mechanism. Cell-to-cell communication occurs via plasmodesmata, whose permeability is regulated by the deposition of callose (β-1,3-glucan) and its degradation by β-1,3-glucanase.
View Article and Find Full Text PDFAnn Bot
September 2025
Department of Botany, Faculty of Science, Charles University, Prague, Czech Republic.
Background And Aims: Since the Industrial Revolution, rising atmospheric CO₂, warming, and more frequent droughts have significantly impacted ecosystems. While the response of leaf functional traits to these climate change factors have been widely studied, reproductive traits remain relatively understudied, despite their key role in the diversification and distribution of flowering plants. Here, we investigated how elevated CO₂, warming, drought, and their interactions affect floral, leaf and seed traits in two model grassland species.
View Article and Find Full Text PDFRisk Anal
September 2025
US Army Engineer Research and Development Center, Concord, Massachusetts, USA.
The COVID-19 pandemic has exposed critical gaps in our management of systemic risks within complex, interconnected systems. This review examines 10 key areas where artificial intelligence (AI) and data analytics can significantly enhance pandemic preparedness, response, and recovery. Inadequate early warning systems, insufficient real-time data on resource needs, and the limitations of traditional epidemiological models in capturing complex disease dynamics are among the challenges analyzed.
View Article and Find Full Text PDFAnn Clin Transl Neurol
September 2025
23andMe, Inc., Sunnyvale, California, USA.
Objective: To examine the associations of LRRK2 p.G2019S, GBA1 p.N409S, polygenic risk scores (PRS), and APOE E4 on PD penetrance, risk, and symptoms.
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