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Predicting Outcome of Cytoreduction in Advanced Ovarian Cancer (PREDAtOOR)

I

Institute of Hospitalization and Scientific Care (IRCCS)

Status

Enrolling

Conditions

Ovarian Cancer Stage IV
Ovarian Cancer Stage III

Treatments

Diagnostic Test: Artificial Intelligence

Study type

Interventional

Funder types

Other

Identifiers

Details and patient eligibility

About

PREDAtOOR is a pilot study and this study aims at improving the selection of the best treatment strategy for patients with advanced ovarian cancer by using Camera Vision (CV) to predict outcomes of cyto reduction at the time of Diagnostic laparoscopy.

Full description

For the treatment of advanced ovarian cancer, the decision to undergo primary surgery is complex and decided by the surgeon while multiple considering multiple elements. Sometimes, chemotherapy is needed before surgery to shrink some of the tumours. To choose the best patients for primary surgery, several prediction tools have been developed. CT and MRI have most commonly been used to identify sites and amounts of tumors in the abdomen and can help determine if these tumours can be safely removed by surgery. However, these imaging methods are only a prediction, and sometimes a diagnostic laparoscopy (putting a camera in the abdomen to look at all sites of disease) is performed to help this decision process.

With the introduction of artificial intelligence and machine learning, there is a possibility to create more precise prediction models using images from these diagnostic laparoscopy videos. In particular, the investigators would like to use images from the diagnostic laparoscopy to create machine-learning models to help predict if the tumours can be successfully taken out at primary surgery, or if chemotherapy before surgery would be needed.

The investigators will enroll patients at a one-time point (being the time of surgery) and follow them forward in time and There will be no additional visits other than the surgery.

During surgery time the surgical team takes images however, what makes this different is that these images will be used to help create an algorithm to predict surgical outcomes. These images will be stored in a secure database with an anonymous number not linking these pictures to any of the participants.

Enrollment

151 estimated patients

Sex

Female

Ages

18+ years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • Patients treated at Fondazione Policlinico Gemelli Hospital, Rome Italy, Trillium -Credit Valley Hospital, Mississauga, Ontario and Princess Margaret Cancer Centre, Toronto, Canada
  • Patients fit for cytoreductive surgery
  • Patients with a primary diagnosis of suspect Stage III-IV ovarian cancer
  • Patients selected for interval cytoreductive surgery after NACT

Exclusion criteria

  • Patients with pre-operative Stage I-II disease confined to the pelvis
  • Patients unfit for surgery
  • Lack of information about patients' surgical outcomes and clinicopathological characteristics
  • LGSOC, Clear cell and mucinous, non-epithelial histologic subtypes (if available)

Trial design

Primary purpose

Diagnostic

Allocation

N/A

Interventional model

Single Group Assignment

Masking

None (Open label)

151 participants in 1 patient group

Clinical Stage III-IV Ovarian Cancer
Experimental group
Description:
individuals who have been diagnosed or are suspected to have Clinical Stage III-IV Ovarian Cancer and CT and MRI have most commonly been used to identify sites and amounts of tumors in the abdomen and can help determine if these tumors can be safely removed by surgery. However, these imaging methods are only a prediction, and sometimes a diagnostic laparoscopy (putting a camera in the abdomen to look at all sites of disease) is performed to help this decision process.
Treatment:
Diagnostic Test: Artificial Intelligence

Trial contacts and locations

1

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Central trial contact

Liat Hogen, MD; Ferdous Parveen, MBBS

Data sourced from clinicaltrials.gov

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