Spelling suggestions: "subject:"tumor board"" "subject:"tumor hoard""
1 |
Deliberative Decision-Making in One Medical Workplace SettingTeston, Christa Beth 10 April 2009 (has links)
No description available.
|
2 |
A Treatment Decision Support Model for Laryngeal Cancer Based on Bayesian NetworksHikal, Aisha 07 June 2024 (has links)
The increase in diagnostic and therapeutic procedures in the treatment of oncological diseases, as well as the limited capacity of experts to provide information, necessitates the development of therapy decision support systems (TDSS). We have developed a treatment decision model that integrates available patient information as well as tumor characteristics. They are assessed according to their relevance in evaluating the optimal therapy option. Our treatment model is based on Bayesian
networks (BN) which integrate patient-specific data with expert-based implemented causalities to suggest the optimal therapy option and therefore potentially support the decision-making process for treatment of laryngeal carcinoma. To test the reliability of our model, we compared the calculations of our model with the documented therapy from our data set, which contained information on 97 patients with laryngeal carcinoma. Information on 92 patients was used in our analyses and
the model suggested the correct treatment in 419 out of 460 treatment modalities (accuracy of 91%). However, unequally distributed clinical data in the test sets revealed weak spots in the model that require revision for future utilization.
|
3 |
Guiding Cancer Therapy: Evidence-driven Reporting of Genomic DataPerera-Bel, Julia 19 November 2018 (has links)
No description available.
|
4 |
Bayesian Networks to Support Decision-Making for Immune-Checkpoint Blockade in Recurrent/Metastatic (R/M) Head and Neck Squamous Cell Carcinoma (HNSCC)Huehn, Marius, Gaebel, Jan, Oeser, Alexander, Dietz, Andreas, Neumuth, Thomas, Wichmann, Gunnar, Stoehr, Matthaeus 02 May 2023 (has links)
New diagnostic methods and novel therapeutic agents spawn additional and heterogeneous information, leading to an increasingly complex decision-making process for optimal treatment of cancer. A great amount of information is collected in organ-specific multidisciplinary tumor boards (MDTBs). By considering the patient’s tumor properties, molecular pathological test results, and comorbidities, the MDTB has to consent an evidence-based treatment decision. Immunotherapies are increasingly important in today’s cancer treatment, resulting in detailed information that influences the decision-making process. Clinical decision support systems can facilitate a better understanding via processing of multiple datasets of oncological cases and molecular genetic information, potentially fostering transparency and comprehensibility of available information, eventually leading to an optimum treatment decision for the individual patient. We constructed a digital patient model based on Bayesian networks to combine the relevant patient-specific and molecular data with depended probabilities derived from pertinent studies and clinical guidelines to calculate treatment decisions in head and neck squamous cell carcinoma (HNSCC). In a validation analysis, the model can provide guidance within the growing subject of immunotherapy in HNSCC and, based on its ability to calculate reliable probabilities, facilitates estimation of suitable therapy options. We compared actual treatment decisions of 25 patients with the calculated recommendations of our model and found significant concordance (Cohen’s κ = 0.505, p = 0.009) and 84% accuracy.
|
5 |
Standardized Diagnostic Workup and Patient-Centered Decision Making for Surgery and Neck Dissection Followed by Risk-Factor Adapted Adjuvant Therapy Improve Loco-Regional Control in Local Advanced Oral Squamous Cell CarcinomaWichmann, Gunnar, Pavlychenko, Mykola, Willner, Maria, Halama, Dirk, Kuhnt, Thomas, Kluge, Regine, Gradistanac, Tanja, Fest, Sandra, Wald, Theresa, Lethaus, Bernd, Dietz, Andreas, Wiegand, Susanne, Zebralla, Veit 30 March 2023 (has links)
Background: Standardized staging procedures and presentation of oral squamous cell
carcinoma (OSCC) patients in multidisciplinary tumor boards (MDTB) before treatment
and utilization of elective neck dissection (ND) are expected to improve the outcome,
especially in local advanced LAOSCC (UICC stages III–IVB). As standardized diagnostics
but also increased heterogeneity in treatment applied so far have not been demonstrated
to improve outcome in LAOSCC, a retrospective study was initiated.
Methods: As MDTB was introduced into clinical routine in 2007, 316 LAOSCC patients
treated during 1991-2017 in our hospital were stratified into cohort 1 treated before
(n=104) and cohort 2 since 2007 (n=212). Clinical characteristics, diagnostic procedures
and treatment modality of patients were compared using Chi-square tests and outcome
analyzed applying Kaplan-Meier plots and log-rank tests as well as Cox proportional
hazard regression. Propensity scores (PS) were used to elucidate predictors for impaired
distant metastasis-free survival (DMFS) in PS-matched patients.
Results: Most patient characteristics and treatment modalities applied showed
insignificant alteration. Surgical treatment included significantly more often resection of
the primary tumor plus neck dissection, tracheostomy and percutaneous endoscopic
gastrostomy tube use. Cisplatin-based chemo-radiotherapy was the most frequent. Only
insignificant improved disease- (DFS), progression- (PFS) and event-free (EFS) as well as
tumor-specific (TSS) and overall survival (OS) were found after 2006 as local (LC) and locoregional
control (LRC) were significantly improved but DMFS significantly impaired.
Cox regression applied to PS-matched patients elucidated N3, belonging to cohort 2 and
cisplatin-based chemo-radiotherapy as independent predictors for shortened DMFS. The
along chemo-radiotherapy increased dexamethasone use in cohort 2 correlates with
increased DM.
Conclusions: Despite standardized diagnostic procedures, decision-making considering
clear indications and improved therapy algorithms leading to improved LC and LRC,
shortened DMFS hypothetically linked to increased dexamethasone use had a detrimental
effect on TSS and OS.
|
6 |
Unterstützung der Entscheidungsfindung bezüglich der Therapie mit Immuncheckpointinhibitoren bei rekurrenten/metastasierten(R/M) Kopf-Hals-Karzinomen durch Bayes’sche NetzeHühn, Marius 05 November 2024 (has links)
New diagnostic methods and novel therapeutic agents spawn additional and heterogeneous in-formation, leading to an increasingly complex decision-making process for optimal treatment of cancer. A great amount of information is collected in organ-specific multidisciplinary tumor boards (MDTBs). By considering the patient’s tumor properties, molecular pathological test re-sults, and comorbidities, the MDTB has to consent an evidence-based treatment decision. Im-munotherapies are increasingly important in today’s cancer treatment, resulting in detailed in-formation that influences the decision-making process. Clinical decision support systems can fa-cilitate a better understanding via processing of multiple datasets of oncological cases and mo-lecular genetic information, potentially fostering transparency and comprehensibility of available information, eventually leading to an optimum treatment decision for the individual patient. We constructed a digital patient model based on Bayesian networks to combine the relevant pa-tient-specific and molecular data with depended probabilities derived from pertinent studies and clinical guidelines to calculate treatment decisions in head and neck squamous cell carcinoma (HNSCC). In a validation analysis, the model can provide guidance within the growing subject of immunotherapy in HNSCC and, based on its ability to calculate reliable probabilities, facilitates estimation of suitable therapy options. We compared actual treatment decisions of 25 patients with the calculated recommendations of our model and found significant concordance (Cohen’s κ=0.505, p=0.009) and 84% accuracy.
|
Page generated in 0.064 seconds