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Trial record 2 of 2 for:    genomed4all

GENOMED4ALL: Improving MDS Classification and Prognosis by AI

The safety and scientific validity of this study is the responsibility of the study sponsor and investigators. Listing a study does not mean it has been evaluated by the U.S. Federal Government. Read our disclaimer for details.
 
ClinicalTrials.gov Identifier: NCT04889729
Recruitment Status : Active, not recruiting
First Posted : May 17, 2021
Last Update Posted : September 9, 2022
Sponsor:
Information provided by (Responsible Party):
Istituto Clinico Humanitas

Brief Summary:
Myelodysplastic syndromes (MDS) typically occur in elderly people. Current disese classifcation system and prognostic scores (International Prognostic Scoring System, IPSS) present limitations and in most cases fail to capture reliable prognostic information at individual level. Study of MDS has been rapidly transformed by genome characterization and there is increasing evidence that mutation screening may add significant information to currently available prognostic scores. The project will aim to develop artificial intelligence (AI)-based solutions to improve MDS classification and prognostication, through the implementation of a personalized medicine approach. In close collaboration with the European Reference Network on Rare Hematological Diseases (ERN-EuroBloodNet, FPA 739541), GENOMED4ALL involves multiple clinical partners from the network, while leveraging on healthcare information and repositories that will be gathered incorporating interoperability standards as promoted by ERN-EuroBloodNet central registry, the European Rare Blood Disorders Platform (ENROL, GA 947670).

Condition or disease
Myelodysplastic Syndromes

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Study Type : Observational
Estimated Enrollment : 13284 participants
Observational Model: Cohort
Time Perspective: Retrospective
Official Title: Genomic and Personalized Medicine for All (GENOMED4ALL): Application of Artificial Intelligence to Improve Disease Classification and Prognosis in Myelodysplastic Syndrome.
Actual Study Start Date : March 15, 2021
Estimated Primary Completion Date : December 15, 2022
Estimated Study Completion Date : December 31, 2024

Resource links provided by the National Library of Medicine


Group/Cohort
GENOMED4ALL - MDS patients
Information on targeted mutation screening (NGS including 60 genes related to MDS) from 13284 MDS patients



Primary Outcome Measures :
  1. Improving MDS classification [ Time Frame: through study completion, an average of 2 years ]
    To improve classification of MDS by integrating clinical and hematological information with genomic features. To address this issue, different methods of statistical learning (Dirichlet processes (DP), Bayesian networks (BN)) and machine learning (deep learning physics informed neural network, constrained regression and deep models) will be compared in order to define specific genotype-phenotype correlations and to develop a new disease classification.

  2. Prediction of probability of overall survival (months between diagnosis and death or end of follow up) for patients with MDS [ Time Frame: through study completion, an average of 2 years ]

    Overall survival (OS) will be defined as the time (expressed in months) between diagnosis and death (as a result of all causes) or end of follow-up (censored observations).

    New prognostic scores will be defined including the following features: age expressed in years; sex (male or female); neutrophils count (number of neutrophils*10^6/L), platelets count (number of plateles 10^6/L), hemoglobin concentration (g/dl), cytogenetics (stratified according to IPPS-R criteria, Blood 2012 120: 2454-2465), percentage of bone marrrow blasts and presence of gene mutations (presence versus absence).

    Different statistical methods will be used to measure prediction accuracy (measured by concordance index, C-index): Cox proporsional-hazard methods, random survival forests, neural networks, continous individualized risk index (CIRI), times series analysis and Markov modeling for stochastic trajectories prediction


  3. Prediction of probability of leukemia free surivival (months from diagnosis to progression to acute leukemia or end of follow up) for patients with MDS [ Time Frame: through study completion, an average of 2 years ]

    Leukemia will be defined as the time (expressed in months) between diagnosis and progression to acute leukemia or end of follow-up.

    New prognostic scores will be defined including the following features: age expressed in years; sex (male or female); neutrophils count (number of neutrophils*10^6/L), platelets count (number of plateles 10^6/L), hemoglobin concentration (g/dl), cytogenetics (stratified according to IPPS-R criteria, Blood 2012 120: 2454-2465), percentage of bone marrrow blasts and presence of gene mutations (presence versus absence).

    Different statistical methods will be used to measure prediction accuracy (measured by concordance index, C-index): Cox proporsional-hazard methods, random survival forests, neural networks, continous individualized risk index (CIRI), times series analysis and Markov modeling for stochastic trajectories prediction




Information from the National Library of Medicine

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Ages Eligible for Study:   18 Years and older   (Adult, Older Adult)
Sexes Eligible for Study:   All
Accepts Healthy Volunteers:   No
Sampling Method:   Non-Probability Sample
Study Population
Patients affected by MDS. 13284 patients with clinical and genomic information availability
Criteria

Inclusion Criteria:

  • Patients affected by MDS according WHO criteria > 18 years old
  • Avaliability of clinical and hematological information
  • Availability of information on targeted mutation screening

Exclusion Criteria:

  • none of the above

Information from the National Library of Medicine

To learn more about this study, you or your doctor may contact the study research staff using the contact information provided by the sponsor.

Please refer to this study by its ClinicalTrials.gov identifier (NCT number): NCT04889729


Locations
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Italy
Istituto Clinico Humanitas
Milano, Italy
Sponsors and Collaborators
Istituto Clinico Humanitas
Investigators
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Principal Investigator: Federico Alvarez UNIVERSIDAD POLITECNICA DE MADRID SPAIN
Principal Investigator: Lucia Comnes DATAWIZARD SRL ITALY
Principal Investigator: Mar Manu Pereira FUNDACIO HOSPITAL UNIVERSITARI VALL D'HEBRON - INSTITUT DE RECERCA SPAIN
Principal Investigator: Pierre Fenaux ASSISTANCE PUBLIQUE HOPITAUX DE PARIS FRANCE
Principal Investigator: Torsten Haferlach MLL MUNCHNER LEUKAMIELABOR GMBH GERMANY
Principal Investigator: Maria Diez Campelo Instituto de investigacion biomedica de Salamanca, IBSAL SPAIN
Principal Investigator: Uwe Platzbecker UNIVERSITAET LEIPZIG GERMANY
Principal Investigator: Gastone Castellani ALMA MATER STUDIORUM - UNIVERSITA DI BOLOGNA ITALY
Principal Investigator: Andres Krogh KOBENHAVNS UNIVERSITET DENMARK
Principal Investigator: Babita Singh FUNDACIO CENTRE DE REGULACIO GENOMICA SPAIN
Principal Investigator: Piero Fariselli UNIVERSITA DEGLI STUDI DI TORINO ITALY
Principal Investigator: Kostantinos Marias IDRYMA TECHNOLOGIAS KAI EREVNAS GREECE
Principal Investigator: Mar Mañu Pereira European Reference Network on Rare Hematological Diseases (ERN-EuroBloodNet)
Publications:
Papaemmanuil E, Cazzola M, Boultwood J, Malcovati L, Vyas P, Bowen D, Pellagatti A, Wainscoat JS, Hellstrom-Lindberg E, Gambacorti-Passerini C, Godfrey AL, Rapado I, Cvejic A, Rance R, McGee C, Ellis P, Mudie LJ, Stephens PJ, McLaren S, Massie CE, Tarpey PS, Varela I, Nik-Zainal S, Davies HR, Shlien A, Jones D, Raine K, Hinton J, Butler AP, Teague JW, Baxter EJ, Score J, Galli A, Della Porta MG, Travaglino E, Groves M, Tauro S, Munshi NC, Anderson KC, El-Naggar A, Fischer A, Mustonen V, Warren AJ, Cross NC, Green AR, Futreal PA, Stratton MR, Campbell PJ; Chronic Myeloid Disorders Working Group of the International Cancer Genome Consortium. Somatic SF3B1 mutation in myelodysplasia with ring sideroblasts. N Engl J Med. 2011 Oct 13;365(15):1384-95. doi: 10.1056/NEJMoa1103283. Epub 2011 Sep 26.
Haase D, Stevenson KE, Neuberg D, Maciejewski JP, Nazha A, Sekeres MA, Ebert BL, Garcia-Manero G, Haferlach C, Haferlach T, Kern W, Ogawa S, Nagata Y, Yoshida K, Graubert TA, Walter MJ, List AF, Komrokji RS, Padron E, Sallman D, Papaemmanuil E, Campbell PJ, Savona MR, Seegmiller A, Ades L, Fenaux P, Shih LY, Bowen D, Groves MJ, Tauro S, Fontenay M, Kosmider O, Bar-Natan M, Steensma D, Stone R, Heuser M, Thol F, Cazzola M, Malcovati L, Karsan A, Ganster C, Hellstrom-Lindberg E, Boultwood J, Pellagatti A, Santini V, Quek L, Vyas P, Tuchler H, Greenberg PL, Bejar R; International Working Group for MDS Molecular Prognostic Committee. TP53 mutation status divides myelodysplastic syndromes with complex karyotypes into distinct prognostic subgroups. Leukemia. 2019 Jul;33(7):1747-1758. doi: 10.1038/s41375-018-0351-2. Epub 2019 Jan 11.

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Responsible Party: Istituto Clinico Humanitas
ClinicalTrials.gov Identifier: NCT04889729    
Other Study ID Numbers: GENOMED4ALL: MDS
First Posted: May 17, 2021    Key Record Dates
Last Update Posted: September 9, 2022
Last Verified: September 2022

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Studies a U.S. FDA-regulated Drug Product: No
Studies a U.S. FDA-regulated Device Product: No
Keywords provided by Istituto Clinico Humanitas:
ARTIFICIAL INTELLIGENCE
HEMATOLOGICAL DISEASE
GENOMICS
PROGNOSIS
DISEASE CLASSIFICATION
Additional relevant MeSH terms:
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Preleukemia
Myelodysplastic Syndromes
Syndrome
Disease
Pathologic Processes
Bone Marrow Diseases
Hematologic Diseases
Precancerous Conditions
Neoplasms