| Literature DB >> 33801668 |
Alfredo Cesario1, Irene Simone1, Ida Paris2, Luca Boldrini3, Armando Orlandi4, Gianluca Franceschini5, Filippo Lococo6, Emilio Bria4, Stefano Magno7, Antonino Mulè5, Angela Santoro5, Andrea Damiani3, Daniele Bianchi8, Daniele Picchi8,9, Guido Rasi10, Gennaro Daniele10,11, Alessandra Fabi12, Paolo Sergi8, Giampaolo Tortora4, Riccardo Masetti5,13, Vincenzo Valentini3, Marika D'Oria1, Giovanni Scambia2,14.
Abstract
Clinical trials in cancer treatment are imperative in enhancing patients' survival and quality of life outcomes. The lack of communication among professionals may produce a non-optimization of patients' accrual in clinical trials. We developed a specific platform, called "Digital Research Assistant" (DRA), to report real-time every available clinical trial and support clinician. Healthcare professionals involved in breast cancer working group agreed nine minimal fields of interest to preliminarily classify the characteristics of patients' records (including omic data, such as genomic mutations). A progressive web app (PWA) was developed to implement a cross-platform software that was scalable on several electronic devices to share the patients' records and clinical trials. A specialist is able to use and populate the platform. An AI algorithm helps in the matchmaking between patient's data and clinical trial's inclusion criteria to personalize patient enrollment. At the same time, an easy configuration allows the application of the DRA in different oncology working groups (from breast cancer to lung cancer). The DRA might represent a valid research tool supporting clinicians and scientists, in order to optimize the enrollment of patients in clinical trials. User Experience and Technology The acceptance of participants using the DRA is topic of a future analysis.Entities:
Keywords: artificial intelligence; breast cancer; clinical trial; lung cancer; machine learning; oncology; patient enrollment; personalized medicine; web app
Year: 2021 PMID: 33801668 PMCID: PMC8066078 DOI: 10.3390/jpm11040244
Source DB: PubMed Journal: J Pers Med ISSN: 2075-4426
Figure 1User-centered designed approach. Context: the program manager identifies who are the primary users of the product, how and why they will use it, what are their needs, and which environment they will use the tool. Requirements: when the context is defined, the program manager identifies the detailed requirements of the product, according to the needs of the user. Design solutions and development: once goals and requirements are settled, the ICT professionals and the project manager design and develop the tool for its usability. Evaluate Product: product designers (in this case, ICT professionals) run usability tests to obtain users’ feedback on the product.
Fields chosen by the professionals of the Breast Cancer Working Group, in order to classify the patients inserted in the platform.
| Field | Value Type | Values | Notes |
|---|---|---|---|
| TNM | Text | T (1,2,3,4, IS) | |
| TNM stage | Numerical | From 0 to 4 | If 1,2,3 specify the TNM |
| Age | Numerical | Range | |
| Immunophenotype | Text | Luminal A | |
| Histological examination | Bit | Internal | |
| BMI | Numerical | Mathematic formula | Specify if ≥25 |
| Therapy stage | Text | Neoadjuvant | |
| Genetic test | Ternary | Positive | Possibility to specify the test |
| Mutated PI3K | Ternary | Yes |
Figure 2Hardware infrastructure.
Figure 3Authentication architecture.
Figure 4List of patients uploaded in the system (in Italian). Names are examples and do not correspond to real cases.
Figure 5List of Clinical Trials (in Italian). Names are examples and do not correspond to real cases.
Figure 6New Clinical Trial form (in Italian).
Figure 7List of Phases (in Italian).
Figure 8New Phase insert form (in Italian).
Figure 9New Setting form (in Italian).
Figure 10List of Settings descriptions (in Italian).
Figure 11User Requests (in Italian). Names are examples and do not correspond to real cases.
Figure 12Requests Management (in Italian). Names are examples and do not correspond to real cases.
Figure 13Trials list (in Italian). Names are examples and do not correspond to real cases.
Figure 14Possible enrollment list (in Italian). Names are examples and do not correspond to real cases.
Fields chosen by the professionals of the Lung Cancer Working Group, in order to classify patients inserted in the platform.
| Field | Value Type | Values | Notes |
|---|---|---|---|
| Patient Code (Social Security Number) | Text | Alphanumeric | |
| Pathological TNM | Text | pT (X, 0, 1a, 1b, 1c, 2a, 2b, 3, 4) | Only for complete oncological interventions |
| Clinical TNM descriptors | Numerical | cT (X; 0; 1a; 1b; 1c; 2a; 2b; 3; 4) | |
| Clinical Stage | Numerical | Occult, 0, IA1, IA2, IA3, IB, IIA, IIB, IIIA, IIIB, IIIC, IVA, IVB | |
| Age | Numerical | Range | |
| ECOG performance status | Numerical | 0; 1; 2; 3; 4 | |
| Surgery | Binary | Yes; No | |
| Histology | Text | small cells carcinoma; adenocarcinoma; squamous cell carcinoma; other | |
| Grading | Text | G1; G2; G3 | If applicable |
| Residual disease | Text | R0; R1 | |
| Molecular characteristics | Text | Re-arrangement of ALK and ROS genes; EGFR and KRAS gene mutation; PDL1 expression | Information not mandatory, only if available |
| Therapy type | Text | Surgery; Chemotherapy; Immunotherapy; Radiotherapy; Other |
Number of patients available in the Digital Research Assistant.
| Pathology | N. Patients in the Database | N. Patients Requested for a Trial | N. Enrolled Patients |
|---|---|---|---|
| Breast Cancer | 62 | 1 | 0 |
| Lung Cancer | 34 | 6 | 0 |