Imaging and AI based chromatin biomarkers for diagnosis and therapy evaluation from liquid biopsies.
Kiran ChallaDaniel PaysanDominic LeiserNadia SauderDamien C WeberG V ShivashankarPublished in: NPJ precision oncology (2023)
Multiple genomic and proteomic studies have suggested that peripheral blood mononuclear cells (PBMCs) respond to tumor secretomes and thus could provide possible avenues for tumor prognosis and treatment evaluation. We hypothesized that the chromatin organization of PBMCs obtained from liquid biopsies, which integrates secretome signals with gene expression programs, provides efficient biomarkers to characterize tumor signals and the efficacy of proton therapy in tumor patients. Here, we show that chromatin imaging of PBMCs combined with machine learning methods provides such robust and predictive chromatin biomarkers. We show that such chromatin biomarkers enable the classification of 10 healthy and 10 pan-tumor patients. Furthermore, we extended our pipeline to assess the tumor types and states of 30 tumor patients undergoing (proton) radiation therapy. We show that our pipeline can thereby accurately distinguish between three tumor groups with up to 89% accuracy and enables the monitoring of the treatment effects. Collectively, we show the potential of chromatin biomarkers for cancer diagnostics and therapy evaluation.
Keyphrases
- gene expression
- machine learning
- dna damage
- transcription factor
- radiation therapy
- end stage renal disease
- patients undergoing
- chronic kidney disease
- genome wide
- newly diagnosed
- dna methylation
- ejection fraction
- deep learning
- squamous cell carcinoma
- prognostic factors
- mesenchymal stem cells
- peritoneal dialysis
- ionic liquid
- cell therapy
- ultrasound guided
- bone marrow
- risk assessment
- radiation induced
- big data
- lymph node metastasis
- papillary thyroid
- squamous cell