HHE Emergency and critical care 2019 | Page 10

TABLE 1 Modalities of detection of asynchronies Modalities Advantages Disadvantages Ventilator waveforms Non-invasive Easily available Needs expertise No automated analysis from ventilators Might miss some Electrical activity from the diaphragm Depicts diaphragm activity Reliable Continuous and quantifi ed Can be mounted on feeding tubes Need a dedicated catheter and ventilator Does not detect other muscles Needs proper placement Synchrony not automatically detected Oesophageal (and/or transdiaphragmatic) pressure Good estimate of the inspiratory eff ort Gold standard Can be mounted on feeding tubes Needs catheter placement and specifi c monitoring Technical specifi cities (calibration procedure) Software Continuous Automatic Real-time analysis Few studies Not yet validated From reference 10 Phase Asynchronies can be classifi ed as inspiratory or expiratory, depending on the neural respiratory phase that is affected. Inspiratory asynchronies are delayed triggering, ineffective effort and autotriggering, whilst expiratory asynchronies are late and early cycling and double triggering. Relevance Asynchronies can be classifi ed in major or minor, depending on the type of assistance provided by the ventilator: if there is no correspondence at all between patient’s request and ventilator assistance (that is, the patient starts a breath but the ventilator does not provide any support), the asynchrony is ‘major’, whereas if the ventilator supports the patient in response to his/her request, but the assistance is not appropriate (delayed or not suffi cient), the asynchrony is ‘minor’. Mojoli et al pointed out that minor asynchronies might have a greater impact than major ones in ventilated ICU patients. 11 Aetiology Some asynchronies are typically associated with a low patient respiratory drive and/or a too high ventilator assistance (ineffective efforts, delayed cycling, autotriggering, reverse triggering); others are associated with high respiratory drive and low ventilator support, such as early cycling and double triggering. 12 Clinical relevance The fi rst aspect to consider is the prevalence of asynchronies: they are very common during ventilation, not only in assisted modes but also in controlled modes. In 1997, Chao et al 13 observed 200 patients during the weaning from mechanical ventilation and found that 10% of them had ineffective efforts; this phenomenon was associated with prolonged and diffi cult weaning. This was the fi rst large study focusing on patient–ventilator asynchronies. Following on from this, there was an increasing interest on the subject; other studies confi rmed the high prevalence of asynchronies in ICU patients, clarifying their clinical impact as well. Asynchronies started to be considered not only as a cause of discomfort for patients, 14 but also as a cause of prolonged mechanical ventilation, 6,15 muscle injury, higher sedation requirements, 16 and eventually increased mortality. 4 Moreover, asynchronies could be involved in long-term neuropsychological effects in patients with respiratory distress. 17,18 Clinicians applied different monitoring tools to detect asynchronies (oesophageal pressure, diaphragm electrical activity), and manufacturers produced new modes of ventilation aiming to better fi t patients’ requirements (Table 1). Clinicians progressively learnt how to visually detect asynchronies by looking at ventilator waveforms at the bedside and to adapt ventilator settings breath by breath accordingly, but also realised that the time required for such management was not compatible with everyday clinical practice in the ICU. In fact, patient– ventilator interaction is highly variable among different patients and, in the same patient at different times. 4 Moreover, it was suggested that brief clusters of asynchronies and more than average frequency of asynchronies, are associated with poor outcome. 19 But it is not feasible to stay at the bedside 24/7 to monitor asynchronies and change the ventilator’s setting according to waveforms. In this context, researchers and manufacturers put their efforts into developing new technologies that are able to replace clinicians in analysing ventilator waveforms and detecting patients’ respiratory activity. 1 Detecting asynchronies at the bedside One can approach asynchronies in two different ways: the fi rst is to rely on software and 10 HHE 2019 | hospitalhealthcare.com The waveform method is based on the identifi cation of a patient’s spontaneous activity