David I.
Ellis
*a,
Howbeer
Muhamadali
a,
Simon A.
Haughey
b,
Christopher T.
Elliott
b and
Royston
Goodacre
a
aSchool of Chemistry, The University of Manchester, Manchester Institute of Biotechnology, University of Manchester, 131 Princess Street, Manchester M1 7ND, UK. E-mail: D.Ellis@manchester.ac.uk
bQueens University Belfast, School of Biological Sciences, Institute of Global Food Security, Antrim, Belfast BT9 5AG, North Ireland, UK
First published on 1st September 2015
Major food adulteration and contamination events occur with alarming regularity and are known to be episodic, with the question being not if but when another large-scale food safety/integrity incident will occur. Indeed, the challenges of maintaining food security are now internationally recognised. The ever increasing scale and complexity of food supply networks can lead to them becoming significantly more vulnerable to fraud and contamination, and potentially dysfunctional. This can make the task of deciding which analytical methods are more suitable to collect and analyse (bio)chemical data within complex food supply chains, at targeted points of vulnerability, that much more challenging. It is evident that those working within and associated with the food industry are seeking rapid, user-friendly methods to detect food fraud and contamination, and rapid/high-throughput screening methods for the analysis of food in general. In addition to being robust and reproducible, these methods should be portable and ideally handheld and/or remote sensor devices, that can be taken to or be positioned on/at-line at points of vulnerability along complex food supply networks and require a minimum amount of background training to acquire information rich data rapidly (ergo point-and-shoot). Here we briefly discuss a range of spectrometry and spectroscopy based approaches, many of which are commercially available, as well as other methods currently under development. We discuss a future perspective of how this range of detection methods in the growing sensor portfolio, along with developments in computational and information sciences such as predictive computing and the Internet of Things, will together form systems- and technology-based approaches that significantly reduce the areas of vulnerability to food crime within food supply chains. As food fraud is a problem of systems and therefore requires systems level solutions and thinking.
The vulnerabilities currently inherent within complex international food supply chains were very publically demonstrated by the horsemeat scandal (so-called ‘Horsegate’ scandal) in 2013 centred in the UK and Europe, which also focused the attention of governments, industry, researchers and regulatory bodies across the world onto the subject of food fraud (food crime) and contamination. The events are well documented but primarily involved the large-scale replacement of processed beef products with horsemeat and other undeclared meat products, such as pork, sometimes up to levels of 100% substitution.5 Of course this form of adulteration (or contamination) of the food supply is nothing new, and is probably as old as the food production systems themselves and continues unabated.1Table 1 contains examples of the adulterants found by Accum and Hassall in some of the first studies of food adulteration and contamination in the first half of the 19th century and published in The Lancet.6,7 A short list of relative recent high impact examples that have affected global food security would include: widespread adulteration of milk products with melamine in China in 2008; PCBs and dioxins in pork via industrial oil contaminated animal feed in Ireland in 2008 (and Belgium in 1999); carcinogenic Sudan I–IV dyes in chilli powder and tomato-based products leading to EU regulation in 2003; scrapie-infected feed for cattle leading to BSE in the late 1980s/early 1990s in the UK; wine adulteration, e.g. by methanol in Italy in 1986; diethylene glycol (used in some anti-freeze products) in Austrian wines in 1985; and Toxic Oil Syndrome in Spain in 1981 which unfortunately killed over 600 people.8
Food product | Adulterant | |
---|---|---|
To increase the bulk/weight | To alter the appearance/flavour | |
Cayenne pepper | Bulked out with the addition of a variety of compounds such as ground rice, mustard seed husks, sawdust, and salt | Coloured with red lead, vermillion, venetian red (from ferric oxide, also known commonly as rust), turmeric |
Cocoa and chocolate | Arrowroot, wheat, maize, sago, potato, tapioca, flour, chicory were commonly used to increase weight and volume | Venetian red, red ochre, and other iron compounds added to effect the colour |
Coffee | Chicory, roasted wheat, rye flour, potato flour, roasted beans, and acorns were added to bulk out the volume | Burnt sugar, which was also referred to as black jack, was used as a darkener |
Confectionery | No bulking agents found | Sweets coloured with Gamboge, a Southeast Asian tree sap/resin, traditionally used to dye Buddhist monks robes. White comfits were coloured with clay from Cornwall, red sweets with red lead and vermillion, green sweets were often found to be coloured with copper salts and Scheele's green, a compound which used to be used to colour paints and also known as copper arsenite (a compound famously linked to the death of Napoleon) |
Custard powders | Bulked out with wheat, potato, or rice flour | Lead chromate, and turmeric were used to enhance the yellow colour |
Gin | Diluted with water | Cayenne, cassia, cinnamon, sugar, alum (aluminium sulfate), and so-called salt of tartar (potassium carbonate) used to change taste |
Olive oil | No bulking agents found | Olive oil was reported to contain lead from the olive presses |
Pickles | No bulking agents found | Toxic copper salts were used as a green colourant |
Porter and stout | Diluted with water | Adulterated with fishberry (also known as Levant nut), a poisonous picrotoxin. And many other adulterants such as brown sugar, capsicum, salt, wormwood, ginger, caraway seeds, highly poisonous Nux vomica seeds from the strychnine tree, brucine, cream of tartar, shavings from the horns of male red deer, treacle, coriander, liquorice and honey |
Red cheese | No bulking agents found | Red lead (lead tetroxide), and vermillion (mercury sulfide), used as colourants |
Tea | Used tea leaves, as well as a variety of leaves from plants not related to tea. Starch, sand, China clay | The pigment Prussian blue (ferric ferrocyanide) in black tea, turmeric, orpiment (arsenic sulfide), and copper salts for green tea. Plumbago, gum, and Indigofera |
Vinegar | No bulking agents found | Vinegar was found to contain dissolved tin and lead after being boiled in pewter vessels. It could also undergo a process known as sharpening, using sulfuric acid |
Whilst these are just a few of the recent major incidents, the engagement with fraudsters and detection of adulterated and contaminated food is continuous and becoming increasingly more sophisticated, with the leading food categories of reported food fraud including adulteration and mislabelling of dairy produce, meat, seafood, wines, spirits, edible oils, honey, fruit juices, coffee and tea, organic food and products, and clouding agents.9 More recently, the adulteration of various herbs10 and spices,11–13 the so-called gutter oil scandal in Asia,14,15 and fake rice, for example, are causing significant or potential problems. One recent report stated that in the UK alone, food and drink companies lose an estimated £11.2 billion per annum to food fraud and that tackling fraud within this industry could boost profitability by £4.48 bn (34%).16 Worldwide, this is a huge and growing problem with sophisticated and well connected networks of fraudsters becoming involved and seeing opportunities in existing and rapidly expanding sectors such as whole meats and fish into newly affluent markets, the burgeoning halal market, where the consumption of haram food is highly undesirable,17–19 and organic food sectors,20 through to low-value but very high turnover products such as processed foods, as was the case with beef substitution with horse etc. in ready meals.
That being said, some forms of MS can be considered as fingerprinting techniques21 as they involve the direct introduction of samples into the mass spectrometer without the requirement for prior chromatographic separation. Some recent examples of these MS fingerprinting techniques have included direct infusion (or injection) mass spectrometry (DIMS) for the characterization of the foodborne pathogen Campylobacter jejuni,22 desorption electrospray ionisation (DESI) for the analysis of melamine migration into foods from melamine tableware,23 matrix-assisted laser desorption (MALDI) MS for the detection of hazelnut oil in extra virgin olive oil (EVOO) down to levels of 1%24 and direct analysis in real-time (DART) MS for the direct swabbing of fruit and vegetables for the detection of pesticides,25 amongst many others. For a more technical explanation of these, and other, lab-based MS methods for the authentication and analysis of food adulteration and contamination, such as isotope ratio mass spectrometry (IRMS),26 the reader is directed to our more comprehensive review on fingerprinting food in Chemical Society Reviews,1 as well as other reviews on the potential of ambient mass spectrometry for high-throughput analyses,27 and DART-MS for food analysis.28
Whilst the MS methods mentioned thus far are all relatively bulky and therefore confined to conventional laboratories, there is obviously huge potential for these techniques outside the lab and out in the food supply chain, with research and development into the portability and miniaturization of ambient MS29 having been underway for some considerable time30 (at least two decades31). These developments have primarily been based around point-of-care clinical applications (such as the Mini 1232) or in-field chemical detection33 applications, though the broader potential of ‘handheld’ MS in other areas such as food analysis has of course been recognised.32,34,35 Very significant and progressive steps in both portability and the less relative term, miniaturization, during the last decade have been achieved with reductions in size to less than 4 kg by Graham Cooks and Zheng Ouyang36 (and for the purposes of this article, we consider any instrument weighing 4 kg or less to be handheld,37 and above 4 kg as portable). Cooks and Ouyang have also been at the forefront in a multitude of other areas of broader MS research such as DESI, low temperature plasma, and paper spray handheld/portable mass spectrometry.38–40 Miniaturization of MS has continued to evolve by addressing technical challenges such as the development of compact low-power pumping systems suitable for miniature MS and the reduction in size of ion traps. These have led to the development of discontinuous atmospheric pressure interface (DAPI), as well as rectilinear ion traps as mass analysers, the optimisation, miniaturization, and simulation of which are still on-going.41,42
Whilst these developments are extremely encouraging, to date these systems still require much further optimization for them to be tolerant to and tested in a wide-range of environmental conditions outside of the laboratory, cost-effective, and importantly, the ability to be used and the data presented in a way that is readily interpretable by those not expert or with a background in MS. The development of totally self-sustained, integrated, and truly handheld MS sensors may yet be sometime in the future. Yet this could still be possible with simplified user interfaces, and as some have reported, perhaps with the same MS core but with any number of interchangeable sample cartridges for a variety of on-site applications.31 Innovations such as these would allow for the true democratisation of MS methods in becoming universal techniques able to be routinely used by non-specialists within a wide range of applications outside of laboratories, such as food supply chains.
The use of NIR hyperspectral imaging as an analytical tool for process control, food safety and quality has also been well recognised, more so during the last decade,46 as well as more recently,47–49 accompanied by the application of chemometrics for data pre-treatment and analysis50,51 and multivariate screening and modelling.52 Other recent reports include the application of NIR to melamine adulteration of soya bean meal53,54 and non-targeted analysis of the adulteration of milk powders.55 Even more relevant to our focus here, are reports such as advancements in the miniaturization of these methods using handheld micro-electrical-mechanical-systems (MEMS) based NIR online in abattoirs for the in situ classification of several different high-value gourmet meat carcass types on the slaughterhouse line56 with further reports into the algorithms used for the rapid transfer of large databases from at-line high performance NIR monochromators downloaded directly to handheld MEMS-NIR.57 These methods have been reported to enable a new approach and confirm the suitability of handheld MEMS-NIR for the rapid, low-cost, on-line/in situ analysis of meat products. For a recent review of the applications of portable NIR in the agro-food industry the reader is directed to dos Santos and co-workers.58
Whilst not having the on-site history that NIR applications have had within the food processing and related industries over the last four decades, the potential of FT-IR spectroscopy for food analysis (and many other forms of rapid bioanalysis44,59,60) has been recognised for some considerable time. As mentioned above, FT-IR operates within the mid-infrared range of the EM spectrum, and along with NIR, it readily presents itself as a rapid, high-throughput at/in/on-line screening technology for food and feed. As well as operating within the mid-infrared, FT-IR (like NIR) uses a broadband source, though the resultant data collected contains fundamental vibrations of the sample under analysis from the entire wavenumber range (unlike NIR which corresponds to vibrational overtones and combination modes, which are consequently broader in nature and not so information rich). Consequently, whilst NIR technology is still improving and is an extremely convenient technology within the agri-food sector (predominantly due to the perceived lack of water interference) for rapid, bulk and high-throughput screening, FT-IR is more sensitive and perhaps more suited to the detection of low-level compounds within complex food matrices and subtle differences between samples from very similar backgrounds.
Within research laboratories FT-IR has a long history of published food-based research applications, such as food and food ingredient authentication,61 with work by Gerard Downey and co-workers contributing a great deal to this, and indeed, other areas of vibrational spectroscopy for food analysis and authentication.62,63 The range of applications of food-based FT-IR research are considerably broad (and increasing) and include the rapid detection of food spoilage bacteria (an indicator of food quality as well as shelf-life estimation) at ambient temperatures in meat,64–67 and detecting food spoilage microorganisms68 on meat in different forms of conventional and vacuum packaging,69 as well as dairy produce.70 Others include the monitoring of bacterial interactions within milk,71 speciation in meat and dairy produce,72,73 and more recently, brand authentication of a range of Trappist beers,74 adulteration of milk75 and of highly processed foods with complex chemical and physical matrices, such as fresh/frozen/thawed beef burgers.76 For a review of FT-IR for rapid authentication and detection of food adulteration, the reader is directed to Rodriguez-Saona and Allendorf.77
Again, as with NIR, the suitability and utility of portable/handheld FT-IR spectroscopy within the food supply chain has become increasingly more evident; with portable and handheld spectroscopy having already been demonstrated for its potential to the move from the confines of the relatively stable and controlled laboratory environment and out into the potentially more challenging and dynamic environs of the food supply chain. Indeed, very recently a considerable body of work by Rodriguez-Saona and co-workers has shown the utility and efficacy of portable and handheld FT-IR for a range of food-based applications. This growing body of work includes monitoring oxidative stability78 as well as measuring trans fat content in edible oils,79 showing that handheld FT-IR can be a simple and rapid alternative to MS for on-site analysis of acrylamides in potato chips,80 and in situ discrimination and authentication of conventionally produced and organic butter.81
Lab-based benchtop combined mid-IR/NIR spectroscopy already exists and allows for the selection of the most appropriate range to be chosen according to context, what is fit-for-purpose, allowing for a broader and more diverse range of samples to be analysed rapidly by a single instrument. It is only a matter of time before such benchtop innovations are significantly reduced in size and available on/at-line, and handheld combination single package MIR/NIR instruments can be used within the food supply chain. These would be simple to use, truly democratised analytical technology much closer to development and commercialisation than handheld MS for use in the food supply chain, with the ability to switch to reduced wavenumber ranges when and if required and generate highly reproducible and easily interpretable data.
In terms of food analysis, Raman spectroscopy also offers other distinct advantages to infrared spectroscopy, with water being a weak Raman scatterer for example, which is always an advantage when the vast majority of foods or feed contain water in some form. It is also a confocal method. Being a confocal technique means that Raman spectroscopy measures precisely at the point where the laser is focused on/within a sample, with any out-of-focus signal being eliminated. This in itself is highly significant as it means that as long as the material the laser is passing through is transparent to laser light, conventional Raman spectroscopy can readily analyse samples through glass or plastic bottles/bags and other forms of transparent packaging (used in abundance throughout the food industry), focusing directly on the contents inside (including liquids) and collect a (bio)chemical fingerprint within seconds; this eliminates the need to remove the sample from the container which is very important if the sample is highly hazardous. Therefore, Raman affords the user some advantages over the infrared methods above. Several groups have undertaken direct comparative studies of infrared and Raman spectroscopies for the investigation of food samples including meat speciation,72 detection of meat spoilage,85 and the detection, enumeration and growth interactions of bacterial species in milk.71 The benefits of direct comparative studies of infrared and Raman have also been recognised in other areas more recently.86 It is interesting to note that as well as these lab-based benchtop comparative studies, a handheld combined FT-IR/Raman spectrometer is already commercially available (see Table 2), in addition to a wide-range of the other handheld spectroscopy devices discussed here.
Company | Product | Spectral range (cm−1) | Weight (kg) | Size (cm) | Laser (nm) | |
---|---|---|---|---|---|---|
a ns = not specified. | ||||||
Raman | Metro-Ohm | Mira M-1 | 400–2300 | 0.54 | 12.5 × 8.5 × 3.9 | 785 |
Mira M-2* | 400–2300 | 0.82 | 14.4 × 9.3 × 6.4 | 1064 | ||
Ocean Optics | ID Raman Mini | 400–2300 | 0.33 | 9.1 × 7.1 × 3.8 | 785 | |
Rigaku | Progeny | 200–2500 | 1.6 | 29.9 × 8.1 × 7.4 | 1064 | |
Thermo Scientific | First Defender RM | 250–2875 | 0.82 | 4.4 × 19.3 × 10.7 | 785 | |
First Defender RMX | 250–2875 | 0.92 | 19.6 × 11.4 × 6.1 | 785 | ||
TruNarc | 250–2875 | 0.505 | 16.3 × 10.4 × 5.1 | 785 | ||
TruScan GP | 250–2875 | 0.9 | 20.8 × 10.7 × 4.3 | 785 | ||
TruScan RM | 250–2875 | 0.9 | 20.8 × 10.7 × 4.3 | 785 | ||
Snowy Range | CBEx | 400–2300 | 0.33 | 9.1 × 7.1 × 3.8 | 785 | |
CBEx 1064 | 400–2300 | 0.77 | 11.3 × 7.9 × 5.7 | 1064 | ||
Sciaps | Inspector 300 | 175–2875 | 1.7 | 19 × 17.5 × 4.3 | 785 | |
Inspector 500 | 100–2500 | 2.7 | 20 × 17.5 × 4.3 | 1030 | ||
Airsense Analytics | LS-ID | ns | 0.4 | 13 × 7 × 4 | 785 | |
Chemring Detection Systems | THOR-1064 | 160–2200 | 1.5 | 22.9 × 11.5 × 5.1 | 1064 | |
PGR-1064 | ns | 1 | 6.4 × 19 × 16.7 | 1064 | ||
BWTEK | NanoRam | 176–2900 | 1.2 | 22 × 10 × 5 | 785 | |
TacticID | 176–2900 | 0.9 | 19 × 10 × 5 | 785 | ||
Wasatch Photonics | NOVA | 200–2500 | 0.82 | 16.2 × 13.2 × 3.7 | 785 | |
Agiltron | Pin Pointer | 200–3000 | 1.36 | 21.4 × 10.8 × 6.3 | 785 | |
TSI | ASSURX | 250–2350 | 1.9 | 23.1 × 10.1 × 22.2 | 785 | |
Bruker | BRAVO | 300–3200 | 1.5 | 27 × 15.6 × 6.2 | 700–1100 | |
FT-IR/Raman | Thermo Scientific | Gemini Analyzer | 250–2875 (Raman) | 1.9 | 25.6 × 14.6 × 6.1 | 785 |
650–4000 (IR) | ||||||
FT-IR | Agilent | 4300 | 650–4500 | 2.2 | 10 × 19 × 35 | Not applicable |
4100 Exoscan | 650–4000 | 3.2 | 17.1 × 11.9 × 22.4 | |||
Thermo Scientific | TruDefender | 650–4000 | 1.3 | 5.3 × 19.6 × 11.2 | ||
Pyreos | Mid-IR | 909–1818 or 2000–4000 | 0.71 | 16.5 × 7.4 × 3.5 | ||
Arcoptix | FTIR-Rocket | 1700–5000 or 830–4000 | 1.2 | 18 × 16 × 8 | ||
NIR | Sentronic | SentroID | 5800–11000 | 1.1 | 23 × 8 × 4.2 | |
BWTEK | i-Spec nano | 4500–7700 | ns | 12 × 6 × 3 | ||
Thermo | microPHAZIR | 4100–6250 | 1.8 | 26.6 × 25.1 × 10.9 | ||
JDSU | MicroNIR Pro | 6000–11000 | 0.06 | 4.5 × 4.4 | ||
ASD | QualitySpec | 4000–28500 | 2.5 | 31 × 10 × 30 | ||
Ocean Optics | NIRQUEST256-2.5 | 4000–11000 | 1.18 | 18.2 × 11 × 4.7 | ||
Avantes | AvaSpec-NIR256-2.5-HSC | 4000–10000 | 3.5 | 18.5 × 14.5 × 18.5 | ||
Brimrose | Luminar 5030 | 4300–9000 (others available) | ns | ns | ||
Arcoptix | FT-NIR Rocket | 3800–11000 | 1.7 | 18 × 12.6 × 7.8 |
The advantages of portable/handheld Raman spectroscopy are being increasingly recognised by the pharmaceutical, materials, biosecurity87 and other sectors, as well as their potential applications within clinical settings.88 In terms of food analysis, relatively recent studies involving portable Raman spectroscopy have included the screening of melamine adulteration in milk powder89 and in other multiple sample matrices such as infant formula, lactose, whey protein, wheat bran and wheat gluten and povidone (which can have contraindications and severe allergic reactions).90 Portable Raman devices have been used successfully for the detection of the organophosphate and organothiophosphate pesticides phorate and fenthion on apple skins91 and the fungicide and parasiticide thiabendazole applied on citrus fruits and bananas,92 authenticity and origin of vegetable and essential oils,93 detection of marker compounds for illegal (non-commercial) alcoholic beverages.94 Detection and discrimination of pathogenic bacteria on food crops in the field,95 detection of offal adulteration in beef burgers;96 rapid meat spoilage identification,97 and finally, a similar study to the one above using MEMS-NIR, for prediction of pork quality on a slaughterhouse line, here using a portable Raman device. Fig. 1 shows a commercially available handheld 1064 nm Raman spectrometer (Snowy Range Instruments, Laramie, USA), with a range of spectra acquired by us from several different foods and beverages including extra virgin olive oil, honey, red wine, beef, whisky, and saffron. For a review of infrared and Raman spectroscopy for the verification of food origin, the reader is, perhaps not surprisingly, directed to Downey.62 In addition, several of the more recent studies have employed surface enhanced Raman scattering (SERS) techniques98,99 and for a more in-depth review of SERS and its application to food safety, specifically in terms of foodborne pathogen detection and food fraud and contamination, the reader is directed to Craig et al.100
Another more recent and exciting innovation and variant of Raman spectroscopy is spatially offset Raman spectroscopy (SORS).101 With SORS, Raman spectra are collected from locations within a sample at depth that are spatially separate from the point at which the sample is illuminated by the laser on the sample's surface. SORS can be undertaken in seconds, by shining a laser light onto a surface/container and detecting the Raman signal at the point of excitation and one or more offset positions, the resultant spectra subtracted using a scaled subtraction, which produce two spectra representing the surface and subsurface of samples.102 Therefore, SORS enables the user to isolate and retrieve chemically rich spectral information from distinct layers, substructures, and indeed through other barriers, which would not be accessible even via conventional Raman spectroscopy, or indeed, any of the other techniques (handheld or otherwise) mentioned thus far. When commenting from the perspective of its potential use for food product analysis, the ability of SORS to penetrate through barriers/packaging and retrieve chemically rich information is especially pertinent and it appears to be a readily transferable technology, and one may even suggest it has the potential to be a highly disruptive technology.
The range of potential SORS applications demonstrated to date include the determination and fast screening of genuine and counterfeit pharmaceuticals (including anti-malarials) through translucent plastic, paper sacks, coloured glass bottles,103,104 and tablet blister packs,105 the latter study by Ricci et al. combining SORS with ATR. This ability to see through and penetrate layers and packaging not transparent to the human eye has led to its use for the screening of liquids, aerosols and gels (LAGs) at multiple international airports,106 concealed liquid explosives detection,107 and other concealed substances in sealed opaque plastic and coloured glass bottles and containers several millimetres thick. These are compared with reference libraries of pure materials, to enable the rapid and unambiguous identification of the containers contents,108 with a reported inherently high probability of detection and low false alarm rate.106 Concealed contents identification has also included the determination of fake and genuine ivory through paint, plastic, varnishes and cloth.109 More recent emerging applications of SORS include those within the clinical sciences and the reader is directed to an excellent review of this area by Pavel Matousek (the co-inventor of this technique) and co-workers including the non-invasive diagnosis of bone disease, cancer, and non-invasive monitoring of glucose levels.110
Being such a recent innovation, the only food-related SORS applications to date include one to demonstrate the potential utility of subsurface detection of lycopene and product quality through the pericarp of tomato fruit,111 and more recently, the qualitative and quantitative characterization of quality parameters of salmon through the skin.112 Whilst there appears to be a paucity of published food-based SORS studies, to date at least, the wide range of applications published thus far in the other areas mentioned above show the specific and seemingly unique combined capabilities of this technique. All of which keenly illustrate that SORS remains an exciting area, ripe for further exploration, development, and detailed investigation within the area of food authenticity, wider food analysis in general within supply chains/networks and its use within other forms of logistic networks.
Term | Definition |
---|---|
Food fraud | Committed when food is deliberately placed on the market for financial gain, with the intent of deception of consumers.* Referred to in the USA and occasionally elsewhere as economically motivated adulteration (EMA). Two of the main types include: trading of food which is unfit for consumption or harmful, or deliberately misdescribing or mislabelling food. The latter can include false statements regarding geographical origin, ingredients, or substitution with lower value (i.e. myrtle instead of oregano), or sometimes even dangerous contents not intended for human consumption (i.e. industrial dyes). The terms food fraud and food adulteration can be used to mean the same thing, when adulteration is intentional |
Contamination | Can involve unwanted and usually unintentional physical, chemical, or biological contamination. Examples could include metal or plastic fragments (physical) or chemicals used for cleaning from food processing equipment, or microbial (bacterial/fungal/toxins) from microbes. If on rare occasions any of these are intentional, then it would be food crime, and depending on the intention and extent of deliberate contamination, bioterrorism |
Food spoilage | Usually described as any changes in organoleptic characteristics which make a food undesirable for consumption. These may include changes in appearance (discoloration), development of off-odours, slime formation, or changes in taste. In meat and poultry for example it is generally accepted that detectable organoleptic spoilage is a result of decomposition and the formation of metabolites caused by the growth of microorganisms |
Food crime | Food crime has been described as the point when food fraud is no longer just random acts caused by so-called ‘rogues’ within the food industry, but when this activity becomes organised and is undertaken by groups who knowingly set out with the intention to deceive, or injure, those purchasing a food product |
Food security | Concerns the food supply, and ensuring access to a secure, sufficient quantity of safe, nutritious food to maintain a healthy and active life |
Food authenticity | Is reflective of a reasonable assumption that the description of the labelling, or the menu section, of a finished food product purchased by the consumer is correct. Reasonableness should be a Wednesbury test in that it assumes no specialist knowledge of the food industry |
Food integrity | Ensuring that food products that are sold or offered are of the quality, substance, and nature expected by the consumer. To sections of society which eschew certain types of foods, due to religious, medical, or dietary considerations, this can be of particular importance |
Indeed, it is worth remembering that the first use of the term the ‘Internet of Things’ (by the British technology pioneer Kevin Ashton) was for its direct application to supply chains.120 IoT is comprised of networks of interconnected communicating sensor/actuating physical objects (Things) able to identify each other, and generate, analyse, share and act upon information across common operating platforms and applications. At its current stage of evolution, at the forefront of IoT sensor technologies are radio frequency identification (RFID) tags/togs/labels, characterized by unique identifiers which can be passive, semi-passive and active, as small as an adhesive sticker, and used to monitor objects in real-time;117e.g., to track luggage at airports. Within food supply chains RFID approaches can be used to monitor product quality in terms of expiry dates on perishable goods,121 determine the probability of goods such as RFID-tagged oils as being counterfeit using mathematical algorithms,122 establish traceability systems,123 enable low cost and ultra-low power food logistics,124 low-cost chipless short range ID and temperature/humidity monitoring,125 and the detection of food freshness and bacterial growth.126
However, as the IoT continues to evolve it will be comprised of many more sensor modalities and innovations in addition to RFID and become fully formed via a much larger analytical sensor,127 biosensor128,129 and computational toolbox.130,131 These will include machine-to-machine communicating fixed/embedded as well as portable/handheld sensor devices with direct human input such as those discussed here. These people-centric (participatory) sensing platforms are able to acquire rapid, timely, and context specific data associated with predicted or anticipated events, compared to data from fixed sensor networks alone,118 and particularly so when in the hands of operatives with experience of supply chains and non-specialists in spectroscopy or science in general. This ability to ensure at the developmental stage that handheld detection methods can be used by non-specialists is in itself an extremely important part of the research and development process of these rapid devices. It forms a part of the knowledge exchange process, is an exercise in mutual learning, and allows the translation of research into practical applications, with positive impacts on the food supply chains and therefore society as a whole.
In addition, whilst fixed or benchtop spectroscopic devices could be based at major distribution and transport nodes/hubs within complex food supply networks, the handheld devices can be taken to changing points of vulnerability to fraud within these increasingly complex and dynamic networks. Points of vulnerability in food supply networks that, in the future, may well have been automatically identified/predicted and targeted for further investigation by pervasive and automated computational systems analysis embedded within an IoT network. As stated elsewhere, pervasive computing in conjunction with sensor technology platforms offers considerable potential for the improvement and efficiency of food supply chains/systems.117
Therefore, the future analytical toolbox will also include a combination of an increasingly innovative sensor portfolio, with methods able to track, trace and detect within food supply chains. These could include microfluidic132,133 and nanofluidic devices such as Nanopore,134 active and intelligent packaging135 and containers,136 DNA barcoding,137 edible tags,138 3D-printed smart caps139 and novel adaptations to existing technologies, such as turning a handheld personal blood glucose meter into a melamine detector for milk for one very recent example.140 In addition to computational tools for data analysis, simulation and fusion, as well as visualisation and interpretation of food supply chains and systems.141–143
Fig. 2 Adapted from a graphical model of Routine Activity Theory,138,139 which is based on the three necessary conditions for many forms of crime (such as food fraud) to occur, converging in time and space. These three conditions require: (i) a likely offender (potential adulterer/fraudster); (ii) a suitable target (food supply network); and (iii) the absence of a capable guardian (detection technologies). The opportunities for, and vulnerabilities to crime (food fraud) occur in the areas where the so-called capable guardian is absent. We propose a technology-based capable guardian system, whereby static and mobile/handheld sensor platforms and technologies and future pervasive, predictive computation will together take on this role and assist in significantly reducing the areas of vulnerability to food crime within food supply chains. |
This journal is © The Royal Society of Chemistry 2015 |