Background:Little is known on factors predicting sunitinib toxicity. Recently, the condition of low muscle mass, named sarcopenia, was identified as a significant predictor of toxicity in metastatic renal cell cancer (mRCC) patients treated with sorafenib. We investigated whether sarcopenia could predict early dose-limiting toxicities (DLTs) occurrence in mRCC patients treated with sunitinib.Methods:Consecutive mRCC patients treated with sunitinib were retrospectively reviewed. A DLT was defined as any toxicity leading to dose reduction or treatment discontinuation. Body composition was evaluated using CT scan obtained within 1 month before treatment initiation.Results:Among 61 patients eligible for analysis, 52.5% were sarcopenic and 32.8% had both sarcopenia and a body mass index (BMI)<25 kg m−2. Eighteen patients (29.5%) experienced a DLT during the first cycle. Sarcopenic patients with a BMI<25 kg m−2 experienced more DLTs (P=0.01; odds ratio=4.1; 95% CI: (1.3–13.3)), more cumulative grade 2 or 3 toxicities (P=0.008), more grade 3 toxicities (P=0.04) and more acute vascular toxicities (P=0.009).Conclusion:Patients with sarcopenia and a BMI<25 kg m−2 experienced significantly more DLTs during the first cycle of treatment.
SUMMARY CellMiner-SCLC ( https://discover.nci.nih.gov/SclcCellMinerCDB/ ) integrates drug sensitivity and genomic data, including high-resolution methylome and transcriptome from 118 patient-derived small cell lung cancer (SCLC) cell lines, providing a resource for research into this “recalcitrant cancer.” We demonstrate the reproducibility and stability of data from multiple sources and validate the SCLC consensus nomenclature on the basis of expression of master transcription factors NEUROD1, ASCL1, POU2F3, and YAP1. Our analyses reveal transcription networks linking SCLC subtypes with MYC and its paralogs and the NOTCH and HIPPO pathways. SCLC subsets express specific surface markers, providing potential opportunities for antibody-based targeted therapies. YAP1-driven SCLCs are notable for differential expression of the NOTCH pathway, epithelial-mesenchymal transition (EMT), and antigen-presenting machinery (APM) genes and sensitivity to mTOR and AKT inhibitors. These analyses provide insights into SCLC biology and a framework for future investigations into subtype-specific SCLC vulnerabilities.
Posterior reversible encephalopathy syndrome (PRES) is a clinico-radiological entity that may occur in patients receiving anti-vascular endothelial growth factor (VEGF) agents such as bevacizumab and tyrosine kinase inhibitors. Little is known about the characteristics of patients at risk for PRES under anti-VEGF agents. We carried out a comprehensive review of reports documenting the occurrence of PRES in patients receiving anti-VEGF agents. Twenty-six patients are described with a majority of females (73.1%). Almost a third of patients had a past history of hypertension. The most common symptoms included headache, visual disturbance and seizure. A vast majority of patients had hypertension at the diagnosis of PRES, and proteinuria was detectable each time it was investigated. Neurological outcome was favorable in all cases with a symptomatic treatment including blood pressure control. The risk of PRES is increased when blood pressure is poorly controlled and when proteinuria is detectable. The clinical course appears favorable with a symptomatic treatment. PRES is a potentially severe but manageable toxicity of anti-VEGF agents.
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