Anthony
Fardet
*a,
Sanaé
Lakhssassi
a and
Aurélien
Briffaz
b
aUniversité Clermont Auvergne, INRA, UNH, Unité de Nutrition Humaine, CRNH Auvergne, F-63000 Clermont-Ferrand, France. E-mail: anthony.fardet@clermont.inra.fr; Fax: +33(0)4 73 62 47 55; Tel: +33(0)473 62 47 04
bCIRAD, UMR Qualisud, TA B-95/16, 73 rue J-F. Breton, F- 34398 Montpellier Cedex 5, France
First published on 18th December 2017
Processing has major impacts on both the structure and composition of food and hence on nutritional value. In particular, high consumption of ultra-processed foods (UPFs) is associated with increased risks of obesity and diabetes. Unfortunately, existing food indices only focus on food nutritional content while failing to consider either food structure or the degree of processing. The objectives of this study were thus to link non-nutrient food characteristics (texture, water activity (aw), glycemic and satiety potentials (FF), and shelf life) to the degree of processing; search for associations between these characteristics with nutritional composition; search for a holistic quantitative technological index; and determine quantitative rules for a food to be defined as UPF using data mining. Among the 280 most widely consumed foods by the elderly in France, 139 solid/semi-solid foods were selected for textural and aw measurements, and classified according to three degrees of processing. Our results showed that minimally-processed foods were less hyperglycemic, more satiating, had better nutrient profile, higher aw, shorter shelf life, lower maximum stress, and higher energy at break than UPFs. Based on 72 food variables, multivariate analyses differentiated foods according to their degree of processing. Then technological indices including food nutritional composition, aw, FF and textural parameters were tested against technological groups. Finally, a LIM score (nutrients to limit) ≥8 per 100 kcal and a number of ingredients/additives >4 are relevant, but not sufficient, rules to define UPFs. We therefore suggest that food health potential should be first defined by its degree of processing.
In practice, food health potential needs to be defined by both the structure of the food (qualitative aspect) and nutrient composition (quantitative aspect).4 The problem today is that very few data are available on the structure of foods (i.e., density, hardness, thickness porosity, water activity (aw), water holding capacity, viscosity, etc.); and no table of structural food characteristics exists. What is more, only a few studies have linked these characteristics with health potential in animals10 and humans.4,11 Given the increasing consumption of ultra-processed foods, there is therefore an urgent need to collect physical and physical-chemical food characteristics, and to link them with health effects in humans.
Recently, Brazilian epidemiologists published a new classification of foods based on their degree of processing (international NOVA classification),12,13 and showed that populations consuming the most ultra-processed foods (UPF) present the highest prevalence of metabolic deregulations such as obesity,14 lipid dysregulation15 and metabolic syndrome,16 together with the worst nutrient profiles.17,18 Such metabolic deregulations may then constitute the first stages of more serious diseases such as type 2 diabetes, cardiovascular diseases and some cancers.19 Monteiro et al. defined UPF as “formulations mostly of cheap industrial sources of dietary energy and nutrients plus additives, using a series of processes (hence ‘ultra-processed’). Altogether, they are energy-dense, high in unhealthy types of fat, refined starches, free sugars and salt, and poor sources of protein, dietary fiber and micronutrients. UPF are made to be hyper-palatable and attractive, with long shelf-life, and able to be consumed anywhere, any time. Their formulation, presentation and marketing often promote overconsumption”.20 In the end, ultra-processing therefore negatively impacts both food structure and nutrient composition, leading to unstructured, fractionated and recombined energy-dense and micronutrient-poor foods.
In agreement with the Brazilian studies, it has been shown that the more processed the food, the less satiating it is, the higher its glycemic index and the worse its nutrient profile.21,22 In a recent study, we showed that the elderly French population tends to consume more minimally-processed and processed foods than ultra-processed foods.21 The reasons for this are probably to be found in their habits of consuming whole foods and at home meals in their childhood, and they have kept this habit during adulthood and later, and also because retired people have more time to cook fresh foods.
The objectives of this study were therefore to: (i) link textural parameters, water activity, and other non-nutrient food characteristics with degree of processing; (ii) search for associations between these non-nutrient characteristics with nutritional composition; (iii) search for a holistic technological food index including both food structure parameters and nutrient composition in relation with degree of processing; and (iv) go beyond qualitative international NOVA classification to determine quantitative rules for a food to be defined as ultra-processed.
Each subject completes a set of five baseline questionnaires, providing information about sociodemographic and lifestyle (health/risk behaviors), physical activity, anthropometrics, health status, and diet. For the present analysis, we made the following selection: volunteers aged 65 years or older, residing in metropolitan France who had filled in and submitted at least three 24 h dietary records in the first two years after inclusion in the cohort.
A minimum of 10 compression measurements per sample were made for each food matrix, sometimes more if the food had a heterogeneous structure such as shallots, chorizo, meat and sausages (n = 15), Swedish crispbread (n = 12), oranges and clementines (n = 20). The compression test made it possible to calculate three parameters: (1) maximum stress (MS, N cm−2), i.e., the maximum force in relation to the section of the sample; (2) the stress at 20% deformation (N cm−2) corresponds to the force at 20% deformation of the sample in relation to the section of the sample; and (3) the stress at 80% deformation (N cm−2) corresponds to the 80% deformation force of the sample in relation to the section of the sample.
Because some foods were too small and/or semi-solid, e.g., oat flakes, yogurts, sweet maize, chocolate mousse, cooked quinoa and brown rice, shear measurements were carried out on only 117 foods.
For each product, the samples were fragmented and placed in a dry plastic cup filled to two-thirds, and the cup was placed in the aw measuring chamber of the apparatus at a temperature of 20 °C. Each aw measurement was replicated three times. Measurement time depended on the characteristics of the sample. The aw-meter was connected to a (Novasina, NOVOLOG) software that makes it possible to visualize and save the aw curve in real time. When equilibrium was reached between the product and the relative humidity of the measuring chamber air, the aw was considered stable and equal to that of the sample placed in the cup.
The number of ingredients, shelf life and the glycemic index (GI) were not included in the equation because the NOVA classification is firstly based on the number of ingredients, and shelf life and GI were not available for all selected foods.
In our model TI increases with degree of processing: therefore, as LIM was generally considered as increasing with degree of processing, and NDS, FF and aw decreasing with degree of processing, TI becomes:
Having no prior knowledge of changes in textural measurements (n = 8) with the degree of processing, the final textural measurements for TI model were selected as follows: first those that discriminated the most NOVA technological groups; then, among them, if some measurements were significantly correlated only one was finally selected.
Multivariate analyses (Principal Component Analysis, PCA, and Hierarchical Cluster Analysis, HCA) were performed on the 117 foods having a measured value for the 72 variables (consumption profile, n = 2; nutritional composition, n = 55; technological groups (n = 3; G1–G3); FF; number of ingredients; number of additives; aw; compression measurements, n = 3; shear measurements, n = 5; NDS and LIM indices), giving a “117 × 72” matrix. Then PCA was applied to foods having GI and GGE values, i.e., a “36 × 74” matrix. Due to the absence of data for several foods, shelf life was excluded from PCA analysis.
Decision trees and Bayesian networks were applied to the “117 × 71” matrix to define rules for foods belonging to UPF (G 3). Groups 1 and G2 were clustered as non-UPF to compare them with UPF. The variables “number of ingredients” and “number of additives” were removed from the analyses since they are already used to allocate foods to the NOVA technological groups. Several machine learning algorithms were tested to find the best model for food classification for both non-UPF and UPF: Chi-square automatic interaction detector (CHAID), classification and regression trees (CART) and C4.5 algorithms for decision tree analyses; and naive, tree and forest algorithms for Bayesian network analyses. For Bayesian network algorithms, because we are dealing with a supervised learning problem, we used a discretization method that accounts for the variable to be predicted. In this context, we used the Minimum Description Length Principle Cut (MDLPC) method24 which is the best known in automatic learning. For each algorithm, 82% of the foods were used for the learning sample (including a pruning sample), and the 18% remaining for the test sample (model validation). Algorithm efficiency was evaluated through “recall”, “precision” and “overfitting” parameters.
All statistical and data mining analyses were performed using Coheris Analytics SPAD9.0 software (Coheris, Suresnes, France). For all tests, a P value <0.05 indicated a significant effect.
G1 minimally processed | G2 processed | G3 ultra-processed | P | Number of foods | |
---|---|---|---|---|---|
a w, water activity; FF, fullness factor; G1–G3, NOVA technological groups (see Methods); NDS, nutrient density score; Ni/a: number of ingredients and/or additives; LIM, mean percentage of the maximal recommended values for 3 disqualifying nutrients; GGE, glycemic glucose equivalent; GI, glycemic index.a Values are medians, calculated from ESI Table 1.b P-Values from Kruskal–Wallis's test for non-parametric data followed by a post hoc Dunn's test for means multiple comparison. Medians with different superscripts in the same row are significantly different (P < 0.05). | |||||
a w | 0.991* | 0.942** | 0.912** | 1.4 × 10−15 | 139 |
Shelf-life (in days) | 4* | 35** | 7** | 0.0003 | 110 |
N i/a | 1* | 4** | 11*** | 9.9 × 10−26 | 136 |
Maximum stress (N cm−2) | 25.7* | 52.9*,** | 63.2** | 0.032 | 139 |
Stress at 20% deformation (N cm−2) | 4.5* | 5.1* | 2.2* | 0.370 | 139 |
Stress at 80% deformation (N cm−2) | 12.2* | 21.9* | 20.5* | 0.095 | 138 |
Maximum strength (N) | 8.7* | 11.7* | 7.9* | 0.194 | 120 |
Energy at break (J) | 0.057* | 0.034** | 0.035** | 0.009 | 120 |
Shear/stress resistance (N cm−2) | 8.4* | 13.2* | 7.7* | 0.231 | 120 |
Energy at the maximum strength (J) | 0.028* | 0.015*,** | 0.018** | 0.024 | 120 |
Movement at maximum strength (mm) | 7*,** | 7** | 10* | 0.023 | 120 |
NDS | 9.6* | 4.5** | 3.1** | 7.0 × 10−11 | 139 |
LIM score | 0.4* | 23.8** | 25.5** | 2.1 × 10−11 | 139 |
FF | 3.3* | 2.1** | 1.9** | 1.0 × 10−14 | 139 |
GI | 48* | 70** | 64** | 0.001 | 45 |
GGE (g per 100 g) | 7* | 26** | 36** | 0.000 | 45 |
The degree of processing (NOVA variable) was clearly significantly and negatively correlated with aw (R = −0.42), water content (R = −0.70), FF (R = −0.65), energy at break (J) (R = −0.29) and consumption profiles (R = −0.38 for consumption in % population and −0.30 for consumption in g day−1), and significantly and positively correlated with LIM score (R = +0.63), Ni/a (R = +0.81 for Ni and +0.62 for Na), and maximum stress (N cm−2) (R = +0.25). Concerning textural parameters, maximum stress was significantly and positively correlated with stress at 20% and 80% deformation, and maximum strength was significantly and positively correlated with shear/stress resistance, energy at break and energy at maximum strength. Lastly, maximum stress was significantly and positively correlated with maximum strength and shear/stress resistance, and negatively with movement at maximum strength.
Concerning correlations between nutrient composition variables and other parameters, maximum stress was significantly and positively correlated with total carbohydrates, plant proteins, plant lipids and fiber. The same was observed for shear/stress resistance and maximum strength parameters, but to a lesser extent.
PCA was also performed without the NOVA groups to test the importance of this variable on correlations of other food variables (results not shown). Results produced approximatively the same plots, indicating that including the NOVA variable did not bias other correlations.
The loading plot shows the 117 food tested (Fig. 1B). Foods can be separated according to two clear axes representing the degree of processing (from minimal- to UPF) and the origin of the food groups (plant-based versus animal-based foods). Foods in the lower right-hand side of the plot are more processed than those in the upper left-hand side. According to these two axes, animal-based foods are clearly distinguished from minimally-processed plant-based foods, starchy foods, i.e., processed cereal-based products (pastries and bakery products), and confectionary.
Concerning ready-to-eat foods, minimally-processed plant-based foods all clustered on the right-hand side of the plot while more processed foods clustered on the left-hand side.
More specifically, crunchy and crispy bakery foods, i.e., whole-meal toast, puffed cereal patties, wasa-type bread, croutons, Swedish crispbread, whole-meal rusk, crackers, craquotte-type rusks and breadsticks, clustered together. The same is true for confectionary, biscuits, and pastries; for white, black, whole-meal, soft and Viennese breads; and for cheeses and processed meat. The proximity of raw carrots, black radish and asparagus with red and white meat-based products (upper left-hand side of HCA) was unexpected.
TI = (LIM/NDS) × (1/FF) × (1/aw) × (MS/EB). |
Next, several combinations were tested among these variables by removing parameters one by one to search for the TI that best distinguished the three technological groups (G1–G3) and UPF from non-UPF (G1 and G2 clustered in one group). TIs were ranked from the highest to the lowest level of differentiation for both comparisons (Table 2). As expected, Ni/a clearly distinguished non-UPF from UPF, being at the basis of defining G1–G3 groups (results not shown). Consequently Ni/a was not included in the other models. Although the values of all TI models increased with the degree of processing – except LIM/aw – significant differences were only found between G1 and G2–G3 (Table 2). All the models included LIM score and the most discriminating TI was [LIM/NDS ×( 1/EB)]. Adding MS, FF or aw to [LIM/NDS × (1/EB)] and removing EB to [LIM/NDS × (1/EB)] did not modify very much the degree of differentiation.
Technological indices (TI) | G1 minimally processed | G2 processed | G3 ultra-processed | P | Non-UPF G1 + G2 | P |
---|---|---|---|---|---|---|
a w, water activity; EB, energy at break (J); FF, fullness factor; G1–G3, NOVA technological groups (see Methods); NDS, nutrient density score; MS, maximum stress (N m−2); Ni/a: number of ingredients and additives; LIM, mean percentage of the maximal recommended values for 3 disqualifying nutrients. UPF, ultra-processed foods.a Values are medians, calculated from ESI Table 1.b P-Values from the Kruskal–Wallis’ test for non-parametric data followed by a post hoc Dunn's test for means multiple comparison. Medians with different superscripts in the same row are significantly different (P < 0.05).c P-Values from Wilcoxon–Mann Whitney's test for non-parametric data. P < 0.05 indicates that median values for the G1 + G2 group were significantly different from median values for the G3 group (UPF). | ||||||
(LIM/NDS) × (1/EB) | 0.45* | 126.38** | 164.60** | 4.4 × 10−18 | 2.30 | 1.9 × 10−9 |
(LIM/NDS) × (MS/EB) | 17.28* | 4207.16** | 7927.89** | 7.7 × 10−18 | 79.43 | 4.2 × 10−9 |
(LIM/NDS) × (1/FF) × (MS/EB) | 3.65* | 1949.43** | 3854.28** | 7.8 × 10−18 | 25.91 | 4.3 × 10−9 |
LIM/NDS | 0.03* | 4.19** | 7.50** | 8.2 × 10−18 | 0.11 | 1.5 × 10−9 |
(LIM/NDS) × (1/aw) | 0.03* | 7.57** | 8.40** | 8.5 × 10−18 | 0.11 | 4.9 × 10−9 |
(LIM/NDS) × (1/(FF × aw)) | 0.01* | 3.57** | 4.29** | 9.4 × 10−18 | 0.04 | 7.0 × 10−9 |
(LIM/NDS) × (1/(FF × aw)) × (MS/EB) | 3.78* | 2059.97** | 5998.75** | 1.0 × 10−17 | 26.01 | 8.4 × 10−9 |
(LIM/NDS) × (1/FF) | 0.01* | 2.87** | 4.10** | 1.1 × 10−17 | 0.04 | 3.0 × 10−9 |
(LIM/NDS) × (1/aw) × (MS/EB) | 17.39* | 4776.87** | 11624.52** | 1.1 × 10−17 | 79.74 | 9.8 × 10−9 |
LIM/aw | 0.33* | 27.41** | 27.13** | 1.7 × 10−17 | 2.32 | 8.1 × 10−8 |
LIM × (MS/EB) | 223.61* | 22142.93** | 28142.30** | 2.4 × 10−17 | 1028.12 | 2.8 × 10−8 |
(LIM/NDS) × (1/(FF × aw) × MS) | 0.22* | 176.33** | 325.57** | 6.5 × 10−16 | 1.45 | 1.0 × 10−7 |
(LIM/NDS) × MS | 0.94* | 274.69** | 546.24** | 2.3 × 10−15 | 3.91 | 8.4 × 10−8 |
(LIM/NDS) × (1/aw) × MS | 0.94* | 408.90** | 638.23** | 2.3 × 10−15 | 3.96 | 2.2 × 10−7 |
LIM × (1/aw) × MS | 17.53* | 2176.02** | 1969.38** | 9.7 × 10−14 | 40.81 | 2.9 × 10−6 |
Due to the absence of a significant difference between G2 and G3 for all TI models, we then compared non-UPFs (G1 and G2 clustered in one group) with UPFs (G3) medians. In all TI models UPF median values were significantly different from non-UPFs median values (Table 2). The highest differences were found for [LIM/NDS × (1/EB)] and [LIM/NDS] TI models.
Decision tree algorithms | Bayesian network algorithms | |||||
---|---|---|---|---|---|---|
CHAID | CART | C4.5 | Naive | Tree | Forest | |
CHAID, Chi-square automatic interaction detector; CART, classification and regression trees. | ||||||
Recall | 67 | 83 | 83 | 100 | 100 | 100 |
Precision | 57% | 71% | 83% | 60% | 75% | 67% |
Overfitting | 10 | 11 | 9 | −8 | −8 | −12 |
Important variables may be also affected by other variables: for example, SFA content was affected by MUFA content (see Table in the upper right corner of Fig. 4). Thus, when MUFA content was <0.1575 g per 100 g then 94% of non-UPF had a SFA content <0.23 g per 100 g, and 40% of UPF had a SFA content <0.23 g per 100 g. The LIM score was affected by kcal content: when kcal content was <215 per 100 g, 89% of non-UPF had a LIM score <7.35, and only 17% UPF had a LIM score <7.35.
Based on the same food database as that we used in our previous studies,21,22 the results of the present study confirm that UPFs are less satiating, more hyperglycemic and have a less satisfactory nutrient profile than non-UPFs. As expected, UPFs also have a lower aw and longer shelf-life: indeed UPF are generally designed by the agro-food industry primarily for long storage, and a low aw is one of parameters that enable this expectation to be fulfilled. Our range of aw values, e.g., vegetables (range 0.976–1.000), fruit (0.981–0.992), breads (0.891–0.994), oleaginous nuts (0.425), cheeses (0.895–0.997), red and white meats (range: 0.983–0.990), crispy bakery products (0.381–0.435), etc. (ESI Table 1†), are in good agreement with those reported in the exhaustive previously published aw-table by food groups.25
Concerning textural parameters, the distinction between food groups was less clear than for other food data with no significant difference in stress at 20/80% deformation (N cm−2), and shear/stress resistance (N cm−2), probably due to the more heterogeneous textures of foods in group G3, and perhaps the still too few foods in G2 (n = 31) and G3 (n = 27) compared to G1 (n = 59). However, when G1 and G2 clustered as non-UPF and compared to UPF, the effects became significant – or at the limit of significance – with medians of 9.7 and 7.7 for shear resistance (N cm−2), respectively (P = 0.034, results not shown); with medians of 9.0 and 7.9 for maximum strength (N), respectively (P = 0.050, results not shown); and with medians of 6.4 and 9.6 for movement at maximum strength (mm), respectively (P = 0.075, results not shown); showing that UPF tend to be less resistant to shear and easier to break than non-UPF.
No comprehensive table is available for textural characteristics of foods, only some scattered data that can be extracted from a few studies. In the first study, fracture strain (%) and maximum force (N) were measured on three snack foods using a texture measuring instrument (different from Instron), i.e., fried chickpea batter drops (that can be ranked as non-UPF in G2), extruded-cooked corn balls and puffed rice (that can be ranked as UPF in G3).26 Extruded-cooked corn and puffed rice exhibited higher maximum force (at least +58%) and lower fracture strain (at least −47%) than fried chickpea batter drop, in agreement with our magnitudes comparing UPF versus non-UPF. In another study, hardness (equivalent to maximum stress in our study) and fracturability (equivalent to shear resistance in our study) were measured on 29 foods, mostly UPFs, commercial sweet and savory snacks, and confectionary, except a few non-UPF products such as peanuts, fresh California carrots and canned peaches.27 Like in our study, fresh carrots had the highest fracturability score compared to snacks, but also among the highest hardness values, which differed from our relative compression values, in which fresh foods showed lower maximum stress than UPFs. The higher energy at break of minimally-processed foods may be due to their natural fiber (plant-based foods) and/or protein (both plant- and animal-based foods) networks that offer resistance to sectioning. This could explain why – when using HCA – the profiles of raw carrot, black radish and asparagus were close to those of white and red meat-based foods: indeed, their textural profiles were very similar (ESI Table 1†), probably due to the presence of natural protein and fibrous networks that are resistant to shear and break forces. In UPFs, such natural networks are generally unstructured or have been removed by refining, resulting in foods that are easier to section.
Overall, our results show that non-UPF foods tends to be more compressible (role of molars during chewing) but more difficult to section (role of incisors during chewing), although these results need to be confirmed on more foods. In a previous study, we showed that the elderly French population had a relatively healthy diet and consumed more minimally-processed foods (i.e., non-UPFs) than UPFs, suggesting that foods that are resistant to sectioning do not pose a chewing problem for this specific population.21 Beyond a culture-based greater preference for natural foods in this population, another possible explanation is that the elderly take more care of their incisors than of their molars, which are less visible. But the preference for softer foods needs to be confirmed.
Otherwise, the degree of food processing appears to be a very good discriminator of our selected foods using either PCA or HAC; better than classification according to the usual food groups, such as raw plant-based foods, animal-based foods, bakery products, confectionary and pastries. As discussed in a previous paper,28 these results strongly suggest that foods should first be classified according to degree of processing, and second according to usual food groups, and not the reverse. Notably, UPFs were very well distinguished from minimally-processed foods.
In addition to the number of ingredients and additives (Ni/a), which is one of the primary parameters used in the NOVA classification to distinguish minimally-processed and processed foods from UPFs, other important parameters can be used to distinguish foods according to their degree of processing: thus, in our sample of 31 UPFs, the rules for defining them were a LIM score ≥8 per 100 kcal, a SFA content <16.4 g per 100 g and a vitamin E content >0.17 mg per 100 g. The LIM score thus appears to be a better discriminator than textural parameters, such as those tested in this study, or aw. Similar results were obtained by Darmon et al. for 148 ready-to-eat foods, in which most processed foods (equivalent to the G2 and G3 technological groups in our study) were defined by a LIM score >7.5 per 100 kcal and a NDS score <5 per 100 kcal.29 However, in the study by Darmon et al., the processed foods that matched those in our G2 group did not very well distinguish from UPFs, as defined in our study, probably because NDS and LIM scores do not include the number of ingredients as in the NOVA classification. In addition, ‘light’ products with a low LIM score may be wrongly considered as a non-UPF. Consequently, if a rule based on a LIM score threshold of around 7.5–8 per 100 kcal can link a food and ultra-processing, it is not sufficient to objectively define an UPF.
Beyond qualitative classification and rules, we propose a holistic TI including food structure, functional nutritional properties and composition, i.e., NDS and LIM scores, FF, aw and textural parameters to quantify the degree of processing. This is the first time such an index has been proposed, as all previous indices were only based on nutrient composition.1,29,30 In our study, leaving aside Ni/a, overall most TI models performed similarly, and the most discriminating TI model was [(LIM/NDS) × (1/EB)]. Adding MS, FF and aw values to this model did not increase it strength. Therefore, in the context of our 117 selected foods, Ni/a and the [(LIM/NDS) × (1/EB)] ratio are the best determinants of solid UPF.
There could be at least two explanations for the difficulty of textural parameters to strongly discriminate foods according to technological groups: (1) the discrepancy between the number of foods in each NOVA group, i.e., 59, 27 and 31 in G1, G2 and G3 groups, respectively; (2) compression and shear forces may not importantly reflect the degree of processing of our 117 selected foods. Other physical–chemical parameters, that could be related to unstructuration of the food matrix during processing, might also be measured in the future, e.g., density, hardness and/or water-holding. Probably an important issue would be to find an indicator able to discriminate natural food networks, such as fibrous and protein networks, to those encountered in UPFs. For carbohydrate-rich foods probably the GI could be considered as a good indicator to include in the TI because it reflects glucose bioavailability, and indirectly matrix unstructuration.
To be still more holistic, one can also considering including in the TI formulae other functional nutritional properties such as food PRAL and ORAC/FRAP indices, that reflect the acidifying31 and antioxidant32,33 potentials of foods, respectively. Finally, it would be useful to define a TI threshold above which a food can be considered as UPF.
In conclusion, although more foods still need to be tested, our results suggest that it is possible to define a holistic quantitative TI to characterize the degree of processing. In addition, our results also show that MS and EB are only partially involved to differentiate UPFs from non-UPFs. Although MS and EB did differentiate UPF from minimally-processed foods, machinery learning analyses did not include them in the rules for the classification of a food as ultra-processed. However, due to the infinite recombination of ingredients found in UPFs, these latter generally exhibit a very wide range of textures, from very hard (like in hard candy) to very soft and/or liquid texture (like dairy desserts and sodas), suggesting that texture is not the only – and certainly not the most relevant – characteristic to take into consideration to objectively quantify the degree of processing. Therefore, in the context of our study, i.e., 117 foods tested (very few semi-solid foods, and no liquid or ‘light’ foods) and two types of textural measurement, the combination of Ni/a and [(LIM/NDS) × (1/EB)] ratio appear for now as the most relevant determinants of UPFs. It remains that measuring and quantifying the degradation of the “matrix effect” in foods with increasing process intensities appears as a tough challenge. In the end we suggest that food health potential should be first defined by its degree of processing.
a w | Water activity |
EB | Energy at break |
FF | Fullness factor |
FRAP | Ferric reducing antioxidant power |
G1–G3 | NOVA technological groups 1 (minimally-processed), 2 (processed) and 3 (ultra-processed) |
GGE | Glycemic glucose equivalents |
GI | Glycemic index |
HCA | Hierarchical cluster analysis |
LIM | LIMited nutrient score |
MS | Maximum strength |
NDS | Nutrient density score |
N i/a | Number of ingredients/additives |
ORAC | Oxygen radical absorbance capacity |
PCA | Principal component analysis |
PRAL | Potential renal acid load |
SR | Shear resistance |
TI | Technological index |
UPF | Ultra-processed food |
Footnote |
† Electronic supplementary information (ESI) available. See DOI: 10.1039/c7fo01423f |
This journal is © The Royal Society of Chemistry 2018 |