| Literature DB >> 34095071 |
Fidelia Cascini1, Federico Santaroni2, Riccardo Lanzetti3, Giovanna Failla4, Andrea Gentili1, Walter Ricciardi1.
Abstract
Objective: To improve the safety and quality of patient care in hospitals by shaping clinical pathways throughout the patient journey. Study Setting: A risk model designed for healthcare organizations in the context of the challenges arising from comorbidity and other treatment-related complexities. Study Design: The core of the model is the patient and his intra-hospital journey, which is analyzed using a data-driven approach. The structure of a predictive model to support organizational and clinical decision-making activities is explained. Data relating to each step of the intra-hospital journey (from hospital admission to discharge) are extracted from clinical records. Principal Findings: The proposed approach is feasible and can be used effectively to improve safety and quality. It enables the evaluation of clinical risks at each step of the patient journey.Entities:
Keywords: best practices; clinical governance; guidelines; patient safety; quality of care
Mesh:
Year: 2021 PMID: 34095071 PMCID: PMC8175645 DOI: 10.3389/fpubh.2021.667819
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Example parameters describing the initial conditions of the patient.
| List of structured parameters that describe the patient's history information: e.g., familiarity for pathologies, previous surgeries, allergies. | |
| List of structured parameters that describe the physical examination upon admission: e.g., breath sounds, soft and non-tender abdomen, deep tendon reflexes. | |
| List of structured parameters that describe the medications in progress upon admission: e.g., type and dosage of pharmaceutical drugs. | |
| List of structured parameters that describe the diagnosis of the disease that makes hospitalization necessary: e.g., heart attack, stroke, pneumonia. | |
| List of structured parameters that describe the complexity of the clinical case (diagnosis of all diseases present at admission: comorbidity factors, drug allergy, antibiotic resistance). | |
| List of structured parameters that describe the type of hospitalization (emergency, elective, day hospital, or day surgery). | |
| List of structured parameters that describe the expected clinical outcome (based on scientific evidence and clinical practice. They can be measured by activity data such as hospital re-admission rates, morbidity and mortality or by agreed scales). |
Figure 1The patient journeys. Examples of journeys with possible variations: In (A), journey P1 varies from the initial expectations after step S1. It consequently then becomes the real journey, P1* and passes through new stages that had not been anticipated and finally arrives at the expected result, O. In contrast, journey P2, as shown in (B), is varied by means of an additional stage between Steps S1 and S2. In the journey P3, shown in (C), we see a substantial variation from the expected journey, producing an unintended final condition, O* ≠ O. By analyzing the journeys of patients, it is possible to see how these are subject to changes, even when based on CPs. It is also possible to notice steps that patients have to pass through, interpret them, and consider the features of the variables depending on the healthcare facility and the health conditions of the particular patient.
Information needed for the process of case study one.
| 1 | Correct diagnosis and fracture pattern classification according to scientific knowledge and updated protocols |
| 2 | Preoperative planning according to the CT examination and fracture pattern: open reduction internal fixation with plate and screws |
| 3 | Surgical intervention with plate and screws of the distal femur (right side) |
| 4 | Full recovery of limb length, rotation, axis, and articular surface |
| 5 | Under-imaging with no CT scan evaluation of the fracture |
| 6 | Preoperative planning based only on X-ray examination and indication to internal fixation intramedullary nail |
| 7 | Surgical intervention with intramedullary nailing and screws of the articular surface and same outcome |
Information needed for the process of case study two.
| 1 | Polytrauma protocol (X-ray, CT total body, blood samples) |
| 2 | External fixation of the injured limb and CT examination for proper classification of the fracture pattern |
| 3 | Definitive fixation with full recovery |
| 4 | Incorrect preoperative planning with no CT examination and improper internal fixation of the fracture |
| 5 | Malunion of the fracture |
| 6 | Bone osteosynthesis review with bone deformity correction and partial articular recovery of the ankle joint |
Figure 2Oriented graph of possible patient journeys. Example of a graph that models the data collected for a cluster of journeys, according to their specific initial features (condition on admission), I. The expected (or positive) result of this path is O, which can be reached with probability pO. The patient's risk is defined by the probability of reaching different final conditions given the same starting condition upon admission. The risk of obtaining a final condition different from O, starting from condition I on admission, is given by the list of probabilities [p (O1), p (O2), p (O3), p (O4)]. Each node of the graph represents a possible step (initial, intermediate, or final) of the journey (and thus a stage of the patient's condition between admission and discharge), and each edge (or line between nodes) represents a possible succession of steps/stages according to the probability of encountering each of them. Such journeys make up our knowledge base. In particular, we can calculate the probability of arriving at the final step/stage, given any initial node of the graph, be it initial or intermediate.