Clinical Trial Details
— Status: Recruiting
Administrative data
NCT number |
NCT06320132 |
Other study ID # |
BLANDISH |
Secondary ID |
|
Status |
Recruiting |
Phase |
|
First received |
|
Last updated |
|
Start date |
March 13, 2024 |
Est. completion date |
January 31, 2029 |
Study information
Verified date |
March 2024 |
Source |
IRCCS Ospedale San Raffaele |
Contact |
Francesca Guzzo, MD |
Phone |
+393470830669 |
Email |
guzzo.francesca[@]hsr.it |
Is FDA regulated |
No |
Health authority |
|
Study type |
Observational [Patient Registry]
|
Clinical Trial Summary
The goal of this observational study is to train a machine learning system based on data from
patients affected by spontaneous Intracranial Hemorrage. The main question it aims to answer
is whether there is a correlation between actual clinical pratice, reached outcomes and
favorable or unfavorable predictive factors, and anamnesis.
Participants will be treated as per standard clinical practice.
Description:
In NeuroICU, treatments typically adhere to guidelines based on scientific consensus. Despite
this, the prognosis for patients with intracranial hemorrhages has not significantly improved
over recent decades, resulting in generally unsatisfactory outcomes. While randomized
controlled trials (RCTs) are considered the gold standard for clinical research, they can be
expensive and ethically challenging to conduct. Observational studies provide an alternative
method, offering larger datasets covering longer periods, which can be more beneficial and
feasible for certain research endeavors.
Machine Learning (ML) algorithms, unlike classical statistical methods, have the capability
to process a vast number of variables, offering a personalized and dependable approach for
healthcare providers in patient management. Recognizing the necessity for well-designed
studies to identify optimal therapeutic strategies for neurocritical patients and
acknowledging the limitations of existing guidelines, we aim to leverage ML programs to
develop an advanced system capable of uncovering data patterns and linking them to potential
outcomes.
The BLANDISH project focuses on patients with spontaneous intracerebral hemorrhage (sICH), a
condition lacking proven beneficial treatment. By collecting and analyzing data from sICH
patients admitted to neuroICU, the project aims to develop a supervised ML algorithm named
BLANDISH.
This algorithm will stratify patients based on prognosis, identifying those at highest risk
of death and secondary brain injuries. By guiding each patient towards the most targeted
therapeutic strategy, the algorithm could help improve patient outcomes and assess the
effectiveness of current clinical practices. Additionally, it may enable healthcare staff to
better allocate resources and introduce individualized therapeutic programs based on
precision medicine, potentially reducing hospitalization times and healthcare costs.
The initial step in developing the BLANDISH algorithm involves collecting clinical data,
stored in a structured datalake, which serves as a data repository. This platform will gather
information on the clinical course of sICH patients admitted to neuroICU. After data
collection, the next steps include preprocessing, variable selection correlated with patient
mortality, and algorithm training with input data and internal validation to control its
behavior. External validation will follow, involving data collection from various clinical
centers to assess the algorithm's reliability and generalization capacity. A multicenter
observational clinical study will then be conducted to validate the BLANDISH algorithm,
aiming to determine its impact on sICH patient outcomes. This final phase includes a survival
study comparing patients in the experimental group (whose treatment is guided by BLANDISH)
with those following standard clinical practice. The project aims to demonstrate the
superiority of the ML approach over current guidelines, evaluating the accuracy and potential
improvements in patient management across different care settings.